Tools & Strategies News

ML-Based Automated Screening Tool Can Determine Pulmonary Fibrosis Risk

A new machine learning-based screening tool for EMRs can accurately identify patients who have or are at high risk of developing idiopathic pulmonary fibrosis.

A doctor in a white lab coat writing on a clipboard

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By Shania Kennedy

- Researchers from Weill Cornell Medicine, NewYork-Presbyterian, the University of Chicago, Brigham and Women’s Hospital, and Mayo Clinic have created a machine learning (ML)-based screening tool integrated into EMRs that can effectively identify those at high risk of idiopathic pulmonary fibrosis (IPF) before symptoms arise.

According to the National Library of Medicine’s MedlinePlus, IPF is a chronic, progressive lung disease characterized by a buildup of scar tissue in the lungs. The disease can lead to other serious lung conditions, such as lung cancer, pulmonary embolism, pulmonary hypertension, and pneumonia. In the US, approximately 100,000 people have IPF, with 30,000 to 40,000 new cases diagnosed annually.

The disease is considered fatal, with most patients surviving only three to five years after diagnosis. According to the researchers who developed the new ML tool, IPF is generally diagnosed once symptoms are recognized, which is typically later in the disease’s course. Treatments are usually less effective at this stage, making earlier risk identification and detection of IPF crucial to improve health outcomes.