<?xml version="1.0" encoding="UTF-8"?><rss version="2.0"
	xmlns:content="http://purl.org/rss/1.0/modules/content/"
	xmlns:wfw="http://wellformedweb.org/CommentAPI/"
	xmlns:dc="http://purl.org/dc/elements/1.1/"
	xmlns:atom="http://www.w3.org/2005/Atom"
	xmlns:sy="http://purl.org/rss/1.0/modules/syndication/"
	xmlns:slash="http://purl.org/rss/1.0/modules/slash/"
	>

<channel>
	<title>SVM Archives - InnoHEALTH magazine</title>
	<atom:link href="https://innohealthmagazine.com/tag/svm/feed/" rel="self" type="application/rss+xml" />
	<link>https://ztt.nrm.mybluehostin.me/innohealthmagazinetag/svm/</link>
	<description>India&#039;s first magazine on healthcare innovations</description>
	<lastBuildDate>Wed, 23 Oct 2019 11:04:03 +0000</lastBuildDate>
	<language>en-US</language>
	<sy:updatePeriod>
	hourly	</sy:updatePeriod>
	<sy:updateFrequency>
	1	</sy:updateFrequency>
	<generator>https://wordpress.org/?v=6.9.1</generator>

<image>
	<url>https://innohealthmagazine.com/wp-content/uploads/2017/11/innohealthmagazine-favicon.png</url>
	<title>SVM Archives - InnoHEALTH magazine</title>
	<link>https://ztt.nrm.mybluehostin.me/innohealthmagazinetag/svm/</link>
	<width>32</width>
	<height>32</height>
</image> 
<site xmlns="com-wordpress:feed-additions:1">139068796</site>	<item>
		<title>Epilepsy is the Fourth Most Common Neurological Disorder</title>
		<link>https://innohealthmagazine.com/2019/in-focus/theme/ai-can-help-decode-epileptic-brain/</link>
					<comments>https://innohealthmagazine.com/2019/in-focus/theme/ai-can-help-decode-epileptic-brain/#respond</comments>
		
		<dc:creator><![CDATA[InnoHEALTH Magazine]]></dc:creator>
		<pubDate>Wed, 23 Oct 2019 11:04:03 +0000</pubDate>
				<category><![CDATA[Theme]]></category>
		<category><![CDATA[Artificial Intelligence]]></category>
		<category><![CDATA[Blood oxygen level dependent]]></category>
		<category><![CDATA[BOLD]]></category>
		<category><![CDATA[brain injury]]></category>
		<category><![CDATA[Caregiver]]></category>
		<category><![CDATA[Data]]></category>
		<category><![CDATA[Delhi]]></category>
		<category><![CDATA[disease specific networks]]></category>
		<category><![CDATA[EEG]]></category>
		<category><![CDATA[elastic net]]></category>
		<category><![CDATA[electrical activity]]></category>
		<category><![CDATA[electroencephalography]]></category>
		<category><![CDATA[Epilepsy]]></category>
		<category><![CDATA[epilepsy prone brain]]></category>
		<category><![CDATA[epileptic brain]]></category>
		<category><![CDATA[epileptic brains]]></category>
		<category><![CDATA[EU radiology]]></category>
		<category><![CDATA[european radiology]]></category>
		<category><![CDATA[generator of epilepsy]]></category>
		<category><![CDATA[genetic factors]]></category>
		<category><![CDATA[genetic predisposition]]></category>
		<category><![CDATA[Healthy]]></category>
		<category><![CDATA[healthy group]]></category>
		<category><![CDATA[history of epilepsy]]></category>
		<category><![CDATA[hypothesized]]></category>
		<category><![CDATA[IIT]]></category>
		<category><![CDATA[linear data]]></category>
		<category><![CDATA[Machine Learning]]></category>
		<category><![CDATA[Machine learning model]]></category>
		<category><![CDATA[medications]]></category>
		<category><![CDATA[MRI]]></category>
		<category><![CDATA[Neural patterns]]></category>
		<category><![CDATA[neuroimaging data]]></category>
		<category><![CDATA[neurological disorder]]></category>
		<category><![CDATA[neurologists]]></category>
		<category><![CDATA[non linear data]]></category>
		<category><![CDATA[Radiology]]></category>
		<category><![CDATA[resting state functional MRI]]></category>
		<category><![CDATA[rsfMRI]]></category>
		<category><![CDATA[scanning method]]></category>
		<category><![CDATA[spatial maps]]></category>
		<category><![CDATA[Support vector machine]]></category>
		<category><![CDATA[SVM]]></category>
		<category><![CDATA[symptom of epilepsy]]></category>
		<category><![CDATA[Temporal lobe epilepsy]]></category>
		<category><![CDATA[TLE]]></category>
		<guid isPermaLink="false">https://ztt.nrm.mybluehostin.me/innohealthmagazine?p=6554</guid>

					<description><![CDATA[<p>Artificial Intelligence can help decode epileptic brains. Epilepsy is the fourth most common neurological disorder affecting nearly 65 million people worldwide. </p>
<p>The post <a href="https://innohealthmagazine.com/2019/in-focus/theme/ai-can-help-decode-epileptic-brain/">Epilepsy is the Fourth Most Common Neurological Disorder</a> appeared first on <a href="https://innohealthmagazine.com">InnoHEALTH magazine</a>.</p>
]]></description>
										<content:encoded><![CDATA[
		<div id="fws_699fc973e670c"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row top-level"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p style="text-align: justify !important;">Artificial Intelligence can help decode epileptic brains. Epilepsy is the fourth most common neurological disorder affecting nearly 65 million people worldwide. The seizures or ‘fits’ as is commonly known, arise due to unusual electrical activity in the brain and is the chief symptom of epilepsy. Neither dependent on age or gender, the onset of the seizure is unpredictable without a set pattern of frequency of occurrence or severity, often posing a challenge to the caregiver.</p>
<p><em><strong><a href="https://innohealthmagazine.comissues/one-student-commits-suicide-every-hour-india/">Did you know that one student commits suicide every hour in India?</a></strong></em></p>
<p style="text-align: justify !important;">Although epilepsy can be related to previous brain injuries or genetic factors, neurologists have found unprovoked, recurrent seizures in healthy individuals too. How and why these seizures occur remains a mystery. However, research has found that the source of seizures is within the brain. In other words, the brain itself is the generator of epilepsy.</p>
<p style="text-align: justify !important;">Spatial maps of top 10 networks: If the origin is within the brain, then are there any fingerprints that can be detected? Does the brain often tell-tale signs which can be mapped to predict the tendency of epilepsy?</p>
<p><a href="https://innohealthmagazine.comresearch/aggression-after-drink/"><em><strong>Reason for Aggression After Drink</strong></em></a></p>
<p style="text-align: justify !important;">Seeking answers to these questions, a team of interdisciplinary researchers conducted a study to peep inside epileptic brains. The results indicate that there exist independent neural networks that can carry disease sensitive information about the anomaly. With the help of machine learning models and artificial intelligence, researchers were able to detect and reveal the hidden patterns.</p>
<p style="text-align: justify !important;">“Epilepsy is not a disorder but the manifesting of something from within the brain’s electrical activity. Interestingly, each one of us has the neural map of epilepsy within our brain. It is only when the network gets fired and manifests externally, in a recurrent manner, it becomes disorder or epilepsy,” explained Dr. Tapan Kumar Gandhi, lead researcher of the study from Indian Institute of TechnologyDelhi, while speaking to India Science Wire.</p>
<p style="text-align: justify !important;">The usual diagnosing tool for epilepsy is by EEG (Electroencephalography) readings of epileptic patterns and visible symptoms like convulsions, loss of consciousness or sensory disturbances.</p>
<p style="text-align: justify !important;">Existing studies reveal specific patterns that represent synchronous activities of sensory, auditory, cognitive and other functions. These activities are indicated by the change in blood flow to the brain and seen as BOLD signals or changes in the Blood-Oxygen-Level-Dependent output.</p>
<p style="text-align: justify !important;">Recent developments in Magnetic Resonance Imaging or MRI help picture these activities in the brain and detect the cause of seizures such as a lesion or scar. However, MRI is not very useful when a seizure flares up. Whereas, functional MRI — another scanning method — can record regional interactions in the brain when a particular task is being performed.</p>
<p style="text-align: justify !important;">In 1995, Indian researchers had found that the brain shows prominent neural network connections even in its resting state. Termed as resting-state functional MRI or rsfMRI, the images from this scanning indicate neural patterns in an individual’s brain even when no action is performed.</p>
<p style="text-align: justify !important;">In the present study, the team utilized rsfMRI technique and performed brain scans on individuals with Temporal Lobe Epilepsy (TLE), which is the most common form of epilepsy.</p>
<p style="text-align: justify !important;">Dr. Gandhi said, “We hypothesized that there could be ‘disease-specific networks’ in epilepsy prone brain that can be identified with the help of the machine learning model.” Machine learning involves artificial intelligence to read live data instead of pre-programmed information. Such a building block of a machine is analogous to a neuron cell in the brain.</p>
<p style="text-align: justify !important;">Researchers used a tool called Support Vector Machine (SVM) to deal with the complex and non-linear data obtained from the scans. By using another algorithm called Elastic-net based ranking, the relevant features of the neuroimaging data were extracted. The signals were integrated to reveal the patterns.</p>
<p style="text-align: justify !important;">The team conducted a pilot study on 132 subjects &#8211; 42 with epilepsy, and the rest with healthy individuals. Parameters like age, gender, history of epilepsy, genetic predisposition, incidents of injuries, medications and more, were taken into account. The epilepsy patients underwent three rsfMRI while those in the healthy group were scanned once.</p>
<p style="text-align: justify !important;">In all, 88 independent components or networks were obtained from the whole brain imaging data and fed as input to the SVM. From the patterns, top 10 strong networks were correlated with clinical features using another standard method called Pearson’s Correlation to generate the rsfMRI epileptic neural networks.</p>
<p style="text-align: justify !important;">From the pattern inputs, the SVM could identify epileptic individuals to an accuracy of 97.5% and specific lobes in the brain responsible for the condition. The model also revealed correlations such as the age of onset, frequency of seizures, or duration of illness.</p>
<p style="text-align: justify !important;">By this, researchers concluded that the independently derived rsfMRI contains epilepsy-related networks. ‘Our research establishes that with the help of machine learning methods, we can identify these networks, as we had hypothesized. Increased strength in these networks indicates the possibility of a progressing Temporal Lobe Epilepsy’, explained Dr.Gandhi.</p>
<p style="text-align: justify !important;">The team included Rose Dawn Bharath, Sujas Bharadwaj, Sanjib Sinha, Kenchaiah Raghavendra, Ravindranadh C. Mundlamuri, Arivazhagan Arimappamagan, Malla Bhaskara Rao, Jamuna Rajeshwaran, Kandavel Thennarasu and Parthasarathy Satishchandra (National Institute of Mental Health and Neurosciences, Bengaluru); Tapan K. Gandhi and Jeetu Raj (IIT, Delhi); Rajanikant Panda (Universitè de Liège, Belgium); Ganne Chaitanya (Thomas Jefferson University, USA) and Kaushik K. Majumdar (Indian Statistical Institute, Bengaluru). The study results have been published in the journal European Radiology.</p>
<p style="text-align: right;"><strong><em>Credits: India Science Wire</em></strong></p>
<p> </p>
</div>




			</div> 
		</div>
	</div> 
</div></div>
<p>The post <a href="https://innohealthmagazine.com/2019/in-focus/theme/ai-can-help-decode-epileptic-brain/">Epilepsy is the Fourth Most Common Neurological Disorder</a> appeared first on <a href="https://innohealthmagazine.com">InnoHEALTH magazine</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://innohealthmagazine.com/2019/in-focus/theme/ai-can-help-decode-epileptic-brain/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
		<post-id xmlns="com-wordpress:feed-additions:1">6554</post-id>	</item>
		<item>
		<title>The Morphing Face of Healthcare in the Artificial Intelligence World</title>
		<link>https://innohealthmagazine.com/2019/persona/healthcare-artificial-intelligence/</link>
					<comments>https://innohealthmagazine.com/2019/persona/healthcare-artificial-intelligence/#respond</comments>
		
		<dc:creator><![CDATA[InnoHEALTH Magazine]]></dc:creator>
		<pubDate>Wed, 27 Mar 2019 09:23:50 +0000</pubDate>
				<category><![CDATA[Persona]]></category>
		<category><![CDATA[AI]]></category>
		<category><![CDATA[AI health market]]></category>
		<category><![CDATA[Alexa]]></category>
		<category><![CDATA[Amazon]]></category>
		<category><![CDATA[Artificial Intelligence]]></category>
		<category><![CDATA[Biopsy]]></category>
		<category><![CDATA[Breast Cancer]]></category>
		<category><![CDATA[Cancer moonshot program]]></category>
		<category><![CDATA[Cardiovascular]]></category>
		<category><![CDATA[Carilion Clinic]]></category>
		<category><![CDATA[Cerebral Palsi]]></category>
		<category><![CDATA[CIS]]></category>
		<category><![CDATA[clinical unstructured data]]></category>
		<category><![CDATA[CT Scan]]></category>
		<category><![CDATA[Deep learning]]></category>
		<category><![CDATA[deep learning algorithm]]></category>
		<category><![CDATA[Digital Health Innovation]]></category>
		<category><![CDATA[Doctor]]></category>
		<category><![CDATA[ECG]]></category>
		<category><![CDATA[EHR]]></category>
		<category><![CDATA[electrophysiological data]]></category>
		<category><![CDATA[GDP]]></category>
		<category><![CDATA[healthcare]]></category>
		<category><![CDATA[heterogenous]]></category>
		<category><![CDATA[IBM]]></category>
		<category><![CDATA[imaging data]]></category>
		<category><![CDATA[Machine Learning]]></category>
		<category><![CDATA[ML]]></category>
		<category><![CDATA[morphing face]]></category>
		<category><![CDATA[MRI]]></category>
		<category><![CDATA[Natural Language Processing]]></category>
		<category><![CDATA[Neuroscience]]></category>
		<category><![CDATA[NLP]]></category>
		<category><![CDATA[NLP algorithm]]></category>
		<category><![CDATA[oncology]]></category>
		<category><![CDATA[SVM]]></category>
		<category><![CDATA[unstructured data]]></category>
		<category><![CDATA[X-ray]]></category>
		<guid isPermaLink="false">https://ztt.nrm.mybluehostin.me/innohealthmagazine?p=5522</guid>

					<description><![CDATA[<p>Artificial Intelligence is a hot topic, simply put – it’s a way of making a computer think intelligently, in a way human think and over a decade now...</p>
<p>The post <a href="https://innohealthmagazine.com/2019/persona/healthcare-artificial-intelligence/">The Morphing Face of Healthcare in the Artificial Intelligence World</a> appeared first on <a href="https://innohealthmagazine.com">InnoHEALTH magazine</a>.</p>
]]></description>
										<content:encoded><![CDATA[
		<div id="fws_699fc973e8239"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p style="text-align: justify !important;"><a href="https://innohealthmagazine.compersona/artificial-intelligence-coming-big-way-healthcare-sector/">Artificial Intelligence (AI)</a> is a hot topic, simply put &#8211; it’s a way of making a computer think intelligently, in a way human think and over a decade now it has managed to be fairly successful. It has found application in several domains, from consumer electronics like smartphones and smart home devices like Amazon’s Alexa to very niche applications in academic research. What began as a nascent academic pursuit to enable computers to think and solve problems using human-like cognitive capabilities has now invaded most aspects of human life, <a href="https://innohealthmagazine.comtrends/first-humanitarian-medicine-delivery-drone/">medicine</a> and healthcare is no exception.</p>
<p style="text-align: justify !important;">Modern medicine has discovered around 60,000 ways things can go wrong with the human body and over thousands of years have probed these illnesses and disorders to better understand and treat them, one drug, one technique at a time. In recent years, however, there has been a dramatic shift in the pace of innovation in healthcare, especially with the advent of artificial intelligence. <a href="https://innohealthmagazine.comwell-being/artificial-intelligence-ayurveda-protocol/">Artificial Intelligence</a> is an umbrella term used to cover a wide array of algorithms which mimic human cognitive functions and are self-correcting, and can ‘learn’ from a dataset.</p>
</div>



<div class="img-with-aniamtion-wrap center" data-max-width="100%" data-max-width-mobile="100%" data-shadow="none" data-animation="fade-in" >
      <div class="inner">
        <div class="hover-wrap"> 
          <div class="hover-wrap-inner">
            <a href="http://bit.ly/2IY3u54" target="_blank" class="center">
              <img decoding="async" class="img-with-animation skip-lazy" data-delay="0" height="60" width="728" data-animation="fade-in" src="https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2.png" alt="cyber4healthcare-online-course-bottom-ad (2)" srcset="https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2.png 728w, https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2-300x25.png 300w" sizes="(max-width: 728px) 100vw, 728px" />
            </a>
          </div>
        </div>
        
      </div>
      </div>
			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973e9184"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p><strong>A mountain of unstructured data</strong></p>
<p style="text-align: justify !important;">One area where AI would do heaps of help to physicians and medical practitioners is to deal with the insurmountable amount of clinical unstructured data. Nearly 80% of the clinical information is “unstructured” and in a format incomprehensible to <a href="https://innohealthmagazine.comnewscope/digital-information-security-healthcare-act/">health information systems</a>. Thus, getting useful information from these so-called unstructured databases becomes a labor-intensive task. To top that, clinical data is doubling every three years; which leaves the healthcare system with a massive volume of unsorted heterogeneous patient information which may hold answers to several <a href="https://innohealthmagazine.cominnohealth-conference/challenges-redefining-healthcare-landscape/">health challenges</a>, but strictly speaking, is of little use in its current form. This <a href="https://innohealthmagazine.cominnohealth-conference/challenges-redefining-healthcare-landscape/">challenge in healthcare</a> of too much data, too little insight can be alleviated by employing Natural Language Processing (NLP), a form of AI which identifies key information from spoken or written human input, such as physical examination records, handwritten lab notes, discharge summaries etc. The promise of NLP lies in its ability to turn this big data into smart data. It can be applied to mine big blocks of clinical data and convert that into organized curated easy-for-retrieval information, which can make documentation of clinical information more manageable. In 2014, IBM’s Watson collaborated with Epic Systems and Carilion Clinic to analyze massive 21 million records in just six weeks and pulled important information about risk factors and other features from examination notes written by physicians and clinical laboratory results into organized EHR templates, and further used predictive modeling to identify patients at risk to congestive heart failure with an assuring 85% accuracy rate. Similar efforts of using NLP to tackle cancer and genomics datasets are in process. NLP algorithms thus can be employed with much effectiveness to unlock healthcare’s big data crisis to extract clinically relevant information and make it available for doctors to make smart decisions about their patients.</p>
</div>



<div class="divider-wrap" data-alignment="default"><div style="margin-top: 12.5px; height: 1px; margin-bottom: 12.5px;" data-width="100%" data-animate="" data-animation-delay="" data-color="extra-color-gradient-1" class="divider-border"></div></div>
<div class="wpb_text_column wpb_content_element " >
	<p><strong>Also Read: <a href="https://innohealthmagazine.comtheme/medical-devices-churning/">Medical Devices In India Witness Churning</a></strong></p>
</div>



<div class="divider-wrap" data-alignment="default"><div style="margin-top: 12.5px; height: 1px; margin-bottom: 12.5px;" data-width="100%" data-animate="" data-animation-delay="" data-color="extra-color-gradient-1" class="divider-border"></div></div>
			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973e9ad4"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				<div class="img-with-aniamtion-wrap " data-max-width="100%" data-max-width-mobile="100%" data-shadow="none" data-animation="fade-in" >
      <div class="inner">
        <div class="hover-wrap"> 
          <div class="hover-wrap-inner">
            <img fetchpriority="high" decoding="async" class="img-with-animation skip-lazy" data-delay="0" height="291" width="833" data-animation="fade-in" src="https://innohealthmagazine.com/wp-content/uploads/2019/03/Artificial-intelligence-in-healthcare.png" alt="Artificial intelligence in healthcare" srcset="https://innohealthmagazine.com/wp-content/uploads/2019/03/Artificial-intelligence-in-healthcare.png 833w, https://innohealthmagazine.com/wp-content/uploads/2019/03/Artificial-intelligence-in-healthcare-300x105.png 300w, https://innohealthmagazine.com/wp-content/uploads/2019/03/Artificial-intelligence-in-healthcare-768x268.png 768w" sizes="(max-width: 833px) 100vw, 833px" />
          </div>
        </div>
        
      </div>
    </div>
			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973ea4ed"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p><strong>Can Artificial Intelligence replace a doctor?</strong></p>
<p style="text-align: justify !important;">Another facet of healthcare where artificial intelligence can find use is analyzing structured data namely genetic data, imaging data from X-ray scans, CT scans, MRIs, etc. and electrophysiological data obtained from electrography of the heart, brain, and other body parts. Machine learning plays a major role owing to its ability to ‘learn’ and make predictions from data without explicit programming. Of the many machine learning algorithms, two such algorithms have been used extensively in both research and healthcare, namely Support Vector Machine (SVM) and Neural Networks (NN), both use supervised learning models. SVM, in particular, has been useful in tasks involving classification and for novelty detection. For example, a 2012 study used SVM to identify imaging biomarkers of neurological and psychiatric disease. SVM has been used as prediction models for <a href="https://innohealthmagazine.comtheme/recent-breakthroughs-diabetes-research/">diabetic</a> and prediabetic patients. In 2010, a research group from Korea applied SVM to make predictions about heart failure patients and their adherence rate to their medication. Two researchers from Australia used SVM for the <a href="https://innohealthmagazine.comtrends/faster-diagnostic-tests-developed-tb/">diagnosis</a> of cerebral palsy gait with an accuracy rate of 96.8%.</p>
<p style="text-align: justify !important;">Neural Networks, on the other hand, form another major chunk of AI algorithm in healthcare. NN algorithms are vaguely based on biological neural networks, in which a collection of interconnected nodes processes the data like how neurons communicate in a human brain. The potential of NN has been multiplied manifold, thanks to the advent of Deep Learning which is an evolved form of NN, it uses multiple hidden layers that can be used to process complex multidimensional data like a human brain. A huge portion of NN algorithms is used for <a href="https://innohealthmagazine.cominnohealth-conference/advances-in-diagnostics/">diagnostic imaging</a>. Early last year, a study published in Nature used CNN, a type of deep learning NN algorithm to identify skin cancer from clinical images. The algorithm which was trained on 29,450 clinical images, was highly specific and sensitive to detection and was on par with the performance of an expert dermatologist with over 90% accuracy. A 2016 study used a variant of deep learning NN to identify interstitial lung disease using CT scan images with 85.5% accuracy. Google’s artificial intelligence team employed deep learning algorithms to study pictures of the back of the eye, for the detection of diabetic retinopathy, a blinding disorder in diabetic patients. Their results showed above 90% accuracy in both sensitivity and specificity of detection, which is at par with a skilled ophthalmologist.</p>
<p><strong>Also Read: <a href="https://innohealthmagazine.comresearch/real-time-health-monitoring-devices/">Advantages &amp; Disadvantages: Real Time Health Monitoring Devices</a></strong></p>
<p style="text-align: justify !important;">Some areas where artificial intelligence surpasses humans is in looking for patterns in data and in making predictions about that data. Processing thousands of images and looking for a subtle discernible pattern within huge volumes of data is a tough task for humans, but that’s what Shinjini Kundu, a physician at the <a href="https://www.upmc.com/">University of Pittsburgh Medical Center</a> has been doing. Her AI algorithms examine images like MRI scans for subtle differences which may not be perceptible to the human eye, and she has employed this to study osteoarthritis and to predict its development way before it’s diagnosis with a whopping 86.2% accuracy. Similar algorithms can be used to see nuanced differences in electrocardiograms, CT scan images and even in oncology to look for invisible patterns of disease onset and progression. As artificial intelligence algorithms get better after each iteration, routine lab tests like X-rays, CT scans, MRI scans, ECG etc. would fall into the domain of artificial intelligence for more quick and reliable results.</p>
</div>




			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973ea889"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				<div class="img-with-aniamtion-wrap " data-max-width="100%" data-max-width-mobile="100%" data-shadow="none" data-animation="fade-in" >
      <div class="inner">
        <div class="hover-wrap"> 
          <div class="hover-wrap-inner">
            <img decoding="async" class="img-with-animation skip-lazy" data-delay="0" height="322" width="829" data-animation="fade-in" src="https://innohealthmagazine.com/wp-content/uploads/2019/03/Human-experience-in-AI.png" alt="Human experience in AI" srcset="https://innohealthmagazine.com/wp-content/uploads/2019/03/Human-experience-in-AI.png 829w, https://innohealthmagazine.com/wp-content/uploads/2019/03/Human-experience-in-AI-300x117.png 300w, https://innohealthmagazine.com/wp-content/uploads/2019/03/Human-experience-in-AI-768x298.png 768w" sizes="(max-width: 829px) 100vw, 829px" />
          </div>
        </div>
        
      </div>
    </div>
			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973eaf78"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p><strong>Investment in AI-centered healthcare</strong></p>
<p style="text-align: justify !important;">Beyond research laboratories and hospitals, the emergence of AI has caused exponential growth in policies regarding AI and investment in AI around the world. AI-based startups have seen rampant growth. Startup Health, an incubator in the US recently reported that there were 7,600 healthcare start-ups around the world working on <a href="https://innohealthmagazine.comblog/sustainable-digital-healthcare-infrastructure/">digital health innovation</a>, a major portion of which involves AI based innovation. An Accenture report published in late 2017 states, “Growth in the AI health market is expected to reach $6.6 billion by 2021 &#8211; that’s a compound annual growth rate of 40%”. Another report by CIS India published this year states that AI could add a whopping $957 billion to the Indian economy by 2035. Even state governments are pushing for growth in AI-based sectors. The government of India aims to increase healthcare spending to 2.5% of the Gross Domestic Product (GDP) by the end of its 12th five-year plan, and to 3% by 2022. Such high rates of adoption are due to several AI start-ups and involvement of major players like Microsoft and IBM.</p>
<p style="text-align: justify !important;">Given the skewed ratio of doctors to patients in India, AI-based healthcare techniques would provide much-needed help in providing healthcare amenities to the masses. Globally, US government have made heavy investments in two of its AI-centered healthcare initiatives, with $1 billion proposed budget to its Cancer Moonshot Program and another $215 million in its Precision Medicine Initiative.</p>
</div>




			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973eb1cf"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p><strong>Ethics and issues with AI in healthcare</strong></p>
<p style="text-align: justify !important;">As rapidly as AI has been embraced by the medical and healthcare community, its benefits cannot be actualized without understanding its ethical pitfalls. But there are several concerns when applying these algorithms at a large scale to make real clinical decisions. Algorithms, albeit self-learning is products designed by human and may reflect their biases in the results they produce. These algorithms may reflect the biases of its designer or biases caused by the dataset on which the algorithm was trained. For example, algorithms developed by private sector entities can be biased to ensure outcomes of their interest or healthcare institutes may use AI systems selectively based on say, insurance plan or economic status of that patient or any other parameter.</p>
<p style="text-align: justify !important;">Even though Deep Learning algorithms can perform sophisticated predictions on imaging data, they are essentially not fed by an explicit code of information but are self-taught systems and even though the prediction score it gives, for example, whether the lesion is malignant or benign are surprisingly accurate when corroborated with the diagnostic report by a doctor, there’s no way to determine how exactly it came to that conclusion, thus rendering AI systems as a black box; with little clarity on how it works. Recently though there have been several predictions to understand how deep learning works, the information bottleneck theory being a prominent one, but the debate is far from settled.</p>
</div>




			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973eb50a"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<p style="text-align: justify !important;">The issues mentioned above are all pertaining to the AI system and its functioning, but there are vital concerns about AI’s effect on people involved in care. Several studies have shown that patients prefer AI chatbots and virtual nurses over humans when learning about their diagnosis as they can proceed to learn at their own pace without the embarrassment of not keeping up with the doctor’s speed. Patients are also more open to conversation with a computer than a human being, part of the reason being the diminished shame and fear associated with being vulnerable. But Allison Pugh, a Professor of Sociology at the University of Virginia and a writer for the New Yorker, thinks that virtual nurses and AI bots offer nothing more than the thinnest veil of care. She writes, “[&#8230;] automating or using AI to deliver care would be the same as relying on a “cloth monkey”—a reference to a cruel experiment, carried out in 1959, in which infant monkeys were given a choice between two surrogate mothers, one made from welded wire, the other from terry cloth. (The infants preferred the cloth mother, even when only the wire mother gave them milk.) AI-driven care was a sorry version of the real thing.”</p>
<p style="text-align: justify !important;">As demonstrated by several research groups, deep learning algorithms have achieved human-level accuracy and then some more. It can look for patterns which are invisible to the human eye. Thus, sooner or later, displacing and relegating doctors from their positions, at least in certain areas of healthcare. This can lead to massive burnouts in doctors as their roles shift drastically and may even lead to a gradual attrition of their skills. But there’s more to care than just interpreting blood reports and imaging data of a patient, it has much more to do about understanding the needs of patients, their mental state, etc. The secret of healthcare is not in reading out objective reports, but in the assurance and the warmth, a doctor’s cadence can provide. “Caring is expressed in listening, in the time-honored ritual of the skilled bedside exam &#8211; reading the body &#8211; in touching and looking at where it hurts and ultimately in localizing the disease for patients not on a screen, not on an image, not on a biopsy report, but on their bodies.”, writes Abraham Verghese, an author and a physician at Stanford.</p>
<p style="text-align: justify !important;">Employing AI to most healthcare activities might also have a negative effect on how knowledge is generated. Most medical knowledge generated in the past has been curiosity driven. AI systems can tell us whether the lesion is a benign mole or a tumor, but it can’t provide answers to why the tumor has a corrugated surface or white patches etc.</p>
<p style="text-align: justify !important;"><a href="https://innohealthmagazine.comtrends/ai-engraving-footprints-on-healthcare-transcontinental-canvas/">Artificial intelligence is going to be pervasive across the spectrum of healthcare</a>. From routine lab tests to offering a clinical decision, AI algorithms will play a major role in the future of healthcare. As deep learning algorithms get stronger and as the workings of the black box are revealed, AI technology will make further strides in healthcare. But advancements in AI-based healthcare doesn’t mean the downfall of human doctors. Healthcare is a highly emotional and human-centric field and the “human touch” will always play a pivotal role in the delivery of healthcare. Humans, even highly skilled doctors are fallible beings with inherent limitations and artificial intelligence will not sideline these practitioners but augment their abilities, in making an objectively better yet humane decision.</p>
</div>



<div class="img-with-aniamtion-wrap center" data-max-width="100%" data-max-width-mobile="100%" data-shadow="none" data-animation="fade-in" >
      <div class="inner">
        <div class="hover-wrap"> 
          <div class="hover-wrap-inner">
            <a href="http://bit.ly/2IY3u54" target="_blank" class="center">
              <img decoding="async" class="img-with-animation skip-lazy" data-delay="0" height="60" width="728" data-animation="fade-in" src="https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2.png" alt="cyber4healthcare-online-course-bottom-ad (2)" srcset="https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2.png 728w, https://innohealthmagazine.com/wp-content/uploads/2019/04/cyber4healthcare-online-course-bottom-ad-2-300x25.png 300w" sizes="(max-width: 728px) 100vw, 728px" />
            </a>
          </div>
        </div>
        
      </div>
      </div>
			</div> 
		</div>
	</div> 
</div></div>
		<div id="fws_699fc973ebae4"  data-column-margin="default" data-midnight="dark"  class="wpb_row vc_row-fluid vc_row"  style="padding-top: 0px; padding-bottom: 0px; "><div class="row-bg-wrap" data-bg-animation="none" data-bg-animation-delay="" data-bg-overlay="false"><div class="inner-wrap row-bg-layer" ><div class="row-bg viewport-desktop"  style=""></div></div></div><div class="row_col_wrap_12 col span_12 dark left">
	<div  class="vc_col-sm-12 wpb_column column_container vc_column_container col no-extra-padding"  data-padding-pos="all" data-has-bg-color="false" data-bg-color="" data-bg-opacity="1" data-animation="" data-delay="0" >
		<div class="vc_column-inner" >
			<div class="wpb_wrapper">
				
<div class="wpb_text_column wpb_content_element " >
	<h2><strong>About the author</strong></h2>
<p><em><strong>Pratik Pawar</strong></em> <em>is a science writer based in Mumbai. He has a Master’s degree in Biotechnology and currently works as a freelancer writing science-centric pieces with a focus on neuroscience.</em></p>
</div>




<div class="wpb_text_column wpb_content_element " >
	<p><em>Pictures credit: InnoHEALTH Magazine</em></p>
</div>




			</div> 
		</div>
	</div> 
</div></div>
<p>The post <a href="https://innohealthmagazine.com/2019/persona/healthcare-artificial-intelligence/">The Morphing Face of Healthcare in the Artificial Intelligence World</a> appeared first on <a href="https://innohealthmagazine.com">InnoHEALTH magazine</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://innohealthmagazine.com/2019/persona/healthcare-artificial-intelligence/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
		<post-id xmlns="com-wordpress:feed-additions:1">5522</post-id>	</item>
	</channel>
</rss>
