Algorithm can Help Detect Patients at High Risk for Colorectal Cancer


Serious illness and death from CRC can be prevented if asymptomatic polyps and other early-stage cancers are detected and treated early.

In the study, Geisinger identified a group of 25,610 patients who were overdue for CRC screening, and used a machine-learning algorithm to flag those at highest risk for developing cancer. The algorithm, developed by EarlySign, identified patients as high-risk by analyzing age, gender, and a recent outpatient complete blood count (CBC). A nurse then called the patients to inform them of their risk and offer to schedule a colonoscopy.

Of the patients flagged as high-risk, 68% were scheduled for a colonoscopy, and of those, approximately 70% had a significant finding.

“When carefully implemented and supported by healthcare providers, machine learning can be a low-cost, noninvasive supplement to other colorectal cancer screening efforts,” said Keith Boell, D.O., chief quality officer for population initiatives at Geisinger and a co-author of the study. “This technology can act as a safety net, potentially preventing missed or delayed diagnosis among some patients who may already have undiagnosed signs of disease.”

“Our partnership with Geisinger has focused on addressing the devasting impact of CRC with predictive algorithms that can impact early detection, coupled with integration into clinical workflows that lead to a personalized approach to care that engages patients in prevention and treatment,” said Ori Geva, EarlySign co-founder and CEO. “Inclusion of our joint study with Geisinger in NEJM Catalyst Innovations in Care Delivery is a great honor for our team, and we are grateful to all the co-authors and project teams from EarlySign and Geisinger for their achievements in quality research and outcomes.”

Source: Eurekalert



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