{"id":3928,"date":"2020-10-01T18:00:00","date_gmt":"2020-10-01T18:00:00","guid":{"rendered":"https:\/\/www.aiproblog.com\/index.php\/2020\/10\/01\/anticipating-heart-failure-with-machine-learning\/"},"modified":"2020-10-01T18:00:00","modified_gmt":"2020-10-01T18:00:00","slug":"anticipating-heart-failure-with-machine-learning","status":"publish","type":"post","link":"https:\/\/www.aiproblog.com\/index.php\/2020\/10\/01\/anticipating-heart-failure-with-machine-learning\/","title":{"rendered":"Anticipating heart failure with machine learning"},"content":{"rendered":"<p>Author: Adam Conner-Simons | MIT CSAIL<\/p>\n<div>\n<p>Every year, roughly one out of eight U.S. deaths is caused at least in part <a href=\"https:\/\/wonder.cdc.gov\/ucd-icd10.html\">by heart failure<\/a>. One of acute heart failure&rsquo;s most common warning signs is <a href=\"https:\/\/pubmed.ncbi.nlm.nih.gov\/20354029\/\">excess fluid in the lungs<\/a>, a condition known as &ldquo;pulmonary edema.&rdquo;&nbsp;<\/p>\n<p>A patient&rsquo;s exact level of excess fluid often dictates the doctor&rsquo;s course of action, but&nbsp;making such determinations is difficult and requires clinicians to rely on subtle features in X-rays that sometimes lead to inconsistent diagnoses and treatment plans.<\/p>\n<p>To better handle that kind of nuance, a group led by researchers at MIT&rsquo;s Computer Science and Artificial Intelligence Lab (CSAIL) has developed a machine learning model that can look at an X-ray to quantify how severe the edema is, on a four-level scale ranging from 0 (healthy) to 3 (very, very bad). The system determined the right level more than half of the time, and correctly diagnosed level 3 cases 90 percent of the time.<\/p>\n<p>Working with <a href=\"https:\/\/www.bidmc.org\/\">Beth Israel Deaconess Medical Center<\/a> (BIDMC) and <a href=\"https:\/\/www.philips.com\/a-w\/research\/home\">Philips<\/a>, the team plans to integrate the model into BIDMC&rsquo;s emergency-room workflow this fall.<\/p>\n<p>&ldquo;This project is meant to augment doctors&rsquo; workflow by providing additional information that can be used to inform their diagnoses as well as enable retrospective analyses,&rdquo; says PhD student Ruizhi Liao, who was the co-lead author of a related paper with fellow PhD student Geeticka Chauhan and MIT professors Polina Golland and Peter Szolovits.&nbsp;<\/p>\n<p>The team says that better edema diagnosis would help doctors manage not only acute heart issues, but other conditions like sepsis and kidney failure that are strongly associated with edema.&nbsp;<\/p>\n<p>As part of a separate journal article, Liao and colleagues also took <a href=\"https:\/\/news.mit.edu\/2019\/mimic-chest-x-ray-database-0201\">an existing public dataset of X-ray images<\/a> and <a href=\"https:\/\/github.com\/RayRuizhiLiao\/regex_pulmonary_edema\">developed new annotations<\/a> of severity labels that were agreed upon by a team of four radiologists. Liao&rsquo;s hope is that these consensus labels can serve as a universal standard to benchmark future machine learning development.<\/p>\n<p>An important aspect of the system is that it was trained not just on more than 300,000 X-ray images, but also on the corresponding text of reports about the X-rays that were written by radiologists. The team was pleasantly surprised that their system found such success using these reports, most of which didn&rsquo;t have labels explaining the exact severity level of the edema.<\/p>\n<p>&ldquo;By learning the association between images and their corresponding reports, the method has the potential for a new way of automatic report generation from the detection of image-driven findings,<strong>&rdquo; <\/strong>says Tanveer Syeda-Mahmood, a <a href=\"https:\/\/arxiv.org\/abs\/2007.13831\">researcher<\/a> not involved in the project who serves as chief scientist for IBM&rsquo;s <a href=\"https:\/\/researcher.watson.ibm.com\/researcher\/view_group.php?id=4384\">Medical Sieve Radiology Grand Challenge<\/a>. &ldquo;Of course, further experiments would have to be done for this to be broadly applicable to other findings and their fine-grained descriptors.&rdquo;<\/p>\n<p>Chauhan&rsquo;s efforts focused on helping the system make sense of the text of the reports, which could often be as short as a sentence or two. Different radiologists write with varying tones and use a range of terminology, so the researchers had to develop a set of linguistic rules and substitutions to ensure that data could be analyzed consistently across reports. This was in addition to the technical challenge of designing a model that can jointly train the image and text representations in a meaningful manner.<\/p>\n<p>&ldquo;Our model can turn both images and text into compact numerical abstractions from which an interpretation can be derived,&rdquo; says Chauhan. &ldquo;We trained it to minimize the difference between the representations of the X-ray images and the text of the radiology reports, using the reports to improve the image interpretation.&rdquo;<\/p>\n<p>On top of that, the team&rsquo;s system was also able to &ldquo;explain&rdquo; itself, by showing which parts of the reports and areas of X-ray images correspond to the model prediction. Chauhan is hopeful that future work in this area will provide more detailed lower-level image-text correlations, so that clinicians can build a taxonomy of images, reports, disease labels and relevant correlated regions.&nbsp;<\/p>\n<p>&ldquo;These correlations will be valuable for improving search through a large database of X-ray images and reports, to make retrospective analysis even more effective,&rdquo; Chauhan says.<\/p>\n<p>Chauhan, Golland, Liao and Szolovits co-wrote the paper with MIT Assistant Professor Jacob Andreas, Professor William Wells of Brigham and Women&rsquo;s Hospital, Xin Wang of Philips, and Seth Berkowitz and Steven Horng of BIDMC. The paper will be presented Oct. 5 (virtually) at the International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI).&nbsp;<\/p>\n<p>The work was supported in part by the MIT Deshpande Center for Technological Innovation, the MIT Lincoln Lab, the National Institutes of Health, Philips, Takeda, and the Wistron Corporation.<\/p>\n<\/div>\n<p><a href=\"https:\/\/news.mit.edu\/2020\/anticipating-heart-failure-machine-learning-1001\">Go to Source<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Author: Adam Conner-Simons | MIT CSAIL Every year, roughly one out of eight U.S. deaths is caused at least in part by heart failure. One [&hellip;] <span class=\"read-more-link\"><a class=\"read-more\" href=\"https:\/\/www.aiproblog.com\/index.php\/2020\/10\/01\/anticipating-heart-failure-with-machine-learning\/\">Read More<\/a><\/span><\/p>\n","protected":false},"author":1,"featured_media":473,"comment_status":"open","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_bbp_topic_count":0,"_bbp_reply_count":0,"_bbp_total_topic_count":0,"_bbp_total_reply_count":0,"_bbp_voice_count":0,"_bbp_anonymous_reply_count":0,"_bbp_topic_count_hidden":0,"_bbp_reply_count_hidden":0,"_bbp_forum_subforum_count":0,"footnotes":""},"categories":[24],"tags":[],"_links":{"self":[{"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/posts\/3928"}],"collection":[{"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/comments?post=3928"}],"version-history":[{"count":0,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/posts\/3928\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/media\/475"}],"wp:attachment":[{"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/media?parent=3928"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/categories?post=3928"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.aiproblog.com\/index.php\/wp-json\/wp\/v2\/tags?post=3928"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}