{"id":2186,"title":"How algorithms can save people from an early death","link":"https:\/\/www.reframetech.de\/en\/2018\/09\/17\/how-algorithms-can-save-people-from-an-early-death-2\/","date":"09\/17\/2018","date_unix":1537179676,"date_modified_unix":1649928484,"date_iso":"2018-09-17T10:21:16+00:00","content":"<p>It\u2019s a scene characteristic for medical series such as <em>House, MD<\/em> or <em>ER:<\/em> An alarm goes off and the rapid response team rushes in to revive a patient. But what if the warning had come hours before the life-threatening event actually occurred? The US Food and Drug Administration recently greenlighted a system designed to provide exactly that. <strong><a href=\"https:\/\/gizmodo.com\/fda-approves-crisis-predicting-algorithm-to-save-hospit-1821909769\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">\u201cFDA approves crisis-predicting algorithm to save patients from early death<\/a><\/strong><strong>\u201d<\/strong> was one typical headline announcing the news.<\/p>\n<p>The reports describe WAVE, a platform developed by Florida-based med-tech company Excel Medical. Created to protect at-risk patients by predicting life-threatening situations, the always-on system monitors key vital signs and calculates the risk of a potentially fatal event, such as heart attack or respiratory failure, within the next six to eight hours \u2013 and then immediately warns hospital staff.<\/p>\n<p>Some commentators found it notable that WAVE is driven by a computer program. \u201cThis is the first such algorithm to receive FDA approval\u201d is how the <strong>\u00a0<\/strong><strong><a href=\"https:\/\/gizmodo.com\/fda-approves-crisis-predicting-algorithm-to-save-hospit-1821909769\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">US-based tech blog <em>Gizmodo<\/em><\/a><\/strong> put it. Excel Medical wrote in its <strong><a href=\"https:\/\/www.excel-medical.com\/news-press\/excel-medicals-wave-clinical-platform-receives-fda-clearance\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">press release<\/a><\/strong> that the WAVE platform is the \u201cfirst of its kind to be cleared by the FDA.\u201d Talking to <em>Gizmodo,<\/em> Mary Baum, chief strategy officer at Excel Medical, said that WAVE saves patients\u2019 lives by recognizing when their condition is deteriorating, thus saving precious time.<\/p>\n<p><strong>Responding to a medical crisis before it happens <\/strong><strong>\u2013 thanks to algorithmic monitoring <\/strong><\/p>\n<p>According to one <strong><a href=\"https:\/\/journals.lww.com\/journalpatientsafety\/Fulltext\/2013\/09000\/A_New,_Evidence_based_Estimate_of_Patient_Harms.2.aspx\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">study,<\/a><\/strong> up to 400,000 people die in medical institutions in the United States each year because rapid response teams usually do not have enough time to react to potentially lethal cardiac events.<\/p>\n<p>But can algorithms really predict the chance that a person is going to die, thereby saving lives?<\/p>\n<p>Health authorities are convinced the answer is \u201cyes.\u201d And in contrast to what current stories in the US media suggest, the life-saving system is actually based on software which has been in use for a while and has therefore already been tested:<strong><a href=\"http:\/\/www.obsmedical.com\/visensia-the-safety-index\/\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\"> Visensia \u2013 The Safety Index<\/a><\/strong>. This early warning index, used to monitor patients in hospitals, was originally developed by OBS Medical, a spin-out of Oxford University. It received a CE marking back in 2010 as an approved medical product and was cleared by the FDA in 2011. Since then the software has been used by hospitals and clinics, where it is integrated into existing patient-monitoring systems. In the EU, a number of companies license the index, including Swiss-based Anandic Medical Systems.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone  wp-image-1610\" src=\"https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1-300x288.png\" alt=\"\" width=\"544\" height=\"522\" srcset=\"https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1-300x288.png 300w, https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1-768x737.png 768w, https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1-600x576.png 600w, https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1-780x749.png 780w, https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/05\/Kopie-von-Kopie-von-WAVE-1.png 800w\" sizes=\"auto, (max-width: 544px) 100vw, 544px\" \/><\/p>\n<p>Excel Medical now also licenses the algorithm and again received <strong><a href=\"https:\/\/www.accessdata.fda.gov\/cdrh_docs\/pdf17\/K171056.pdf\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">approval by the FDA<\/a><\/strong> to market the software as an integral part of WAVE. The clearance is based on a number of clinical studies at the University of Pittsburgh Medical Center, where the platform\u2019s effectiveness and safety were tested. As part of their\u00a0<strong><a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pmc\/articles\/PMC3673290\/pdf\/nihms467790.pdf\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">analysis,<\/a><\/strong> researchers compared two groups of elderly patients: One was monitored using the software, the control group was not. Six unexpected deaths occurred in the control group, with no deaths taking place in the treatment group.<\/p>\n<p>The remarkable part is that the algorithmic system uses medical data \u2013 such as heart rate, respiratory rate, blood pressure, blood oxygen levels and body temperature \u2013 that have long been available to check a patient\u2019s condition. This is what the typical emergency response looks like: A<strong><a href=\"http:\/\/e-health-com.de\/fileadmin\/user_upload\/dateien\/Downloads\/Gaertner_Normentechn._Anforderungen_an_Patientenueberwachung_und_Alarmierung_Teil1.pdf\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\"> monitoring device<\/a><\/strong> sounds the alarm only if one or more vital signs exceeds predetermined limits, at which point the hospital staff must react quickly. WAVE, however, does more than just monitor whether individual parameters are within their normal range. Instead, it compares the various values and analyzes their combined effect. For example, if blood oxygen levels were to fall slightly, a conventional system would not signal that something dangerous is happening. But if blood pressure and pulse also exhibit slight changes, then the WAVE technology sees all of these events collectively as an early indicator that the patient\u2019s condition is deteriorating \u2013 several hours before any one vital sign becomes an outlier, thus setting off an alarm.<\/p>\n<p>According to Excel Medical, WAVE could save the lives of thousands of hospital patients by alerting medical staff sooner than conventional systems. If the response team receives the information hours in advance that an adverse event is likely, it can calmly decide which measures to take to stabilize the patient.<\/p>\n<p><strong>Human intuition and real-time algorithmic analysis <\/strong><strong>\u2013 a life-saving combination<\/strong><\/p>\n<p>An <strong><u><a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pmc\/articles\/PMC4461986\/pdf\/13054_2015_Article_950.pdf\" target=\"_blank\" aria-label=\"Opens in a new tab\"  target=\"_blank\" rel=\"noopener\">overview study<\/a><\/u>\u00a0<\/strong>by Radboud University Medical Center in the Netherlands, among others, suggests that WAVE and the underlying Visensia Safety Index could indeed provide valuable support for medical staff. The analysis shows that nurses often recognize early on that a patient\u2019s condition is worsening, yet their concern is frequently based on intuition and not on objective information such as heart rate or blood oxygen levels. Instead, their assessment is often influenced by their own subjective, even subconscious perceptions, such as a difference in the patient\u2019s behavior or gaze.<\/p>\n<p>Yet there are no standard procedures for including nurses\u2019 intuitive responses in a patient\u2019s treatment. Surveys reveal that many nurses have difficulty putting their intuition into words \u2013 allowing them to explain, for example, why they feel a patient \u201cdoes not look good.\u201d A nurse with many years of experience will probably be able to trust their gut instinct more than someone just out of nursing school. And they will have a better sense of when and how they should communicate their concern to a doctor.<\/p>\n<p>Algorithms such as the one underlying the WAVE system can thus help doctors and nurses become better at doing their jobs. After all, humans can only register and analyze a limited amount of information about vital signs, while algorithms can spot potentially life-threatening situations in real time, even if individual numbers have only changed minimally. That means algorithms can perhaps confirm what nurses merely suspect based on the patient\u2019s appearance.<\/p>\n<hr \/>\n<p>This is the first part in a three-part series on using algorithms to predict death.<\/p>\n<p>Part 2 is available here: <strong><a href=\"https:\/\/www.reframetech.de\/en\/2018\/09\/17\/how-algorithms-can-save-people-from-an-early-death-2\/\" target=\"_blank\" rel=\"noopener\">\u201c<\/a><\/strong><strong><a href=\"https:\/\/www.reframetech.de\/en\/2018\/09\/19\/optimizing-palliative-care-when-algorithms-predict-a-patients-death\/\" target=\"_blank\" rel=\"noopener\">Optimizing palliative care: When algorithms predict a patient\u2019s death<\/a><\/strong><a href=\"https:\/\/www.reframetech.de\/en\/2018\/09\/17\/how-algorithms-can-save-people-from-an-early-death-2\/\" target=\"_blank\" rel=\"noopener\"><strong>\u201d<\/strong><\/a><\/p>\n<p>Part 3\u00a0 is available here: <a href=\"https:\/\/www.reframetech.de\/en\/2018\/09\/20\/using-algorithms-to-predict-death-lessons-learned\/\" target=\"_blank\" rel=\"noopener\"><strong>\u201cUsing algorithms to predict death: Lessons learned\u201d<\/strong><\/a><\/p>\n<p>&nbsp;<\/p>\n","excerpt":"<p>It\u2019s a scene characteristic for medical series such as House, MD or ER: An alarm goes off and the rapid [&hellip;]<\/p>\n","thumbnail":"https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/03\/Bild5.jpg","thumbnailsquare":"https:\/\/www.reframetech.de\/wp-content\/uploads\/sites\/23\/2018\/03\/Bild5.jpg","authors":[{"id":1308,"name":"Dr. Cinthia Brise\u00f1o","link":"https:\/\/www.reframetech.de\/blogger\/dr-cinthia-briseno\/"}],"categories":[{"id":2,"name":"Uncategorized","link":"https:\/\/www.reframetech.de\/en\/category\/uncategorized\/"}],"tags":[{"id":263,"name":"Algorithm","link":"https:\/\/www.reframetech.de\/en\/tag\/algorithm\/"},{"id":315,"name":"Artificial Intelligence","link":"https:\/\/www.reframetech.de\/en\/tag\/artificial-intelligence\/"},{"id":314,"name":"Automation","link":"https:\/\/www.reframetech.de\/en\/tag\/automation\/"},{"id":313,"name":"Doctors","link":"https:\/\/www.reframetech.de\/en\/tag\/doctors\/"},{"id":113,"name":"Google","link":"https:\/\/www.reframetech.de\/en\/tag\/google\/"},{"id":316,"name":"Hospital","link":"https:\/\/www.reframetech.de\/en\/tag\/hospital\/"},{"id":266,"name":"Prevention","link":"https:\/\/www.reframetech.de\/en\/tag\/prevention\/"},{"id":569,"name":"technology","link":"https:\/\/www.reframetech.de\/en\/tag\/technology\/"},{"id":622,"name":"WAVE","link":"https:\/\/www.reframetech.de\/en\/tag\/wave-en\/"}]}