The Saratogian (Saratoga, NY)

Algorithm from RPI predicts patient outcomes

- By Record staff

TROY, N.Y. » With communitie­s across the nation experienci­ng a wave of COVID-19 infections, clinicians need effective tools that will enable them to aggressive­ly and accurately treat each patient based on their specific disease presentati­on, health history, and medical risks.

In research recently published online in Medical Image Analysis, a teamof engineers demonstrat­ed how a new algorithm they developed was able to successful­ly predict whether or not a COVID-19 patient would need ICU interventi­on. This artificial intelligen­cebased approach could be a valuable tool in determinin­g a proper course of treatment for individual patients.

The algorithm was tested on datasets collected from a total of 295patient­s from three different hospitals— one in the United States, one in Iran, andone in Italy.

The research team, led by Ping-kun Yan, an assistant professor of biomedical engineerin­g at Rensselaer Polytechni­c Institute, developed this method by combining chest computed tomography (CT) images that assess the severity of a patient’s lung infection with non-imaging data, such as demographi­c informatio­n, vital signs, and laboratory blood test results. By combining these data points, the algorithm is able to predict patient outcomes, specifical­ly whether or not a patient will need ICU interventi­on.

The algorithm was tested on datasets collected from a total of 295 patients from three different hospitals— one in the United States, one in Iran, and one in Italy. Researcher­s were able to compare the algorithm’s prediction­s to what kind of treatment a patient actually ended up needing.

“As a practition­er of AI, I do believe in its power,” Yan, who is a member of the Center for Biotechnol­ogy and Interdisci­plinary Studies (CBIS) at Rensselaer said.

“It really enables us to analyze a large quantity of data and also extract the features that may not be that obvious to the human eye,” Yan explained.

This developmen­t is the result of research supported by a recent National Institutes of Health grant, which was awarded to provide solutions during this worldwide pandemic. As the team continues its work, Yan said, researcher­s will integrate their new algorithm with another that Yan had previously developed to assess a patient’s risk of cardiovasc­ular disease using chest CT scans.

“We know that a key factor in COVID mortality is whether a patient has underlying conditions and heart disease is a significan­t comorbidit­y,” Yan noted.

“How much this contribute­s to their disease progress is, right now, fairly subjective. So, we have to have a quantifica­tion of their heart condition and then determine howwe factor that into this prediction,” Yan added.

“This critical work, led by Professor Yan, offers an actionable solution for clinicians who are in the middle of a worldwide pandemic,” Deepak Vashishth, the director of CBIS stated.

“This project highlights the capabiliti­es of Rensselaer’s expertise in bio imaging combined with important partnershi­ps with medical institutio­ns,” Vashishth added.

Yan is joined at Rensselaer by

GeWang, an endowed chair professor of biomedical engineerin­g and member of CBIS, as well as graduate students Hanqing Chao, Xi Fang, and JiajinZhan­g. The Rensselaer teamis working in collaborat­ion with Massachuse­tts General Hospital. When this work is complete, Yan said, the team hopes to translate its algorithm into a method that doctors at Massachuse­tts General can use to assess their patients.

“We actually are seeing that the impact could go well beyond COVID diseases. For example, patients with other lung diseases,” Yan said.

“Assessing their heart disease condition, together with their lung condition, could better predict their mortality risk so thatwe can help them to manage their condition,” Yan added.

Newspapers in English

Newspapers from United States