Friday, November 22, 2024

HealthIT Buzz: Two Sides of the AI/ML Coin in Health Care

As we’ve previously discussed, algorithms—step by step instructions (rules) to perform a task or solve a problem, especially by a computer—have been widely used in health care for decades.  One clear use of these algorithms is through evidence-based, clinical decision support interventions (DSIs). Today, we see a rapid growth in data-based, predictive DSIs, which use models created using machine learning (ML) algorithms or other statistical approaches that analyze large volumes of real-world data (called “training data”) to find patterns and make recommendations. While both evidence-based and predictive DSI types (models) could be used to address the same problem, they rely on different logic that’s “baked into” their software…

DSIs that use evidence-based guidelines or other expert consensus generate recommendations based on how the world should work. Generally, they represent the implementation of expert consensus emerging from high-quality clinical trials, observational studies, and other research. Evidence-based DSIs are usually “fixed rules,” essentially, a series of “if-then” statements that form an algorithm. For instance, “if a woman is between the age of 45-54 and if she is of average risk of breast cancer, then she should get a mammogram every year.”

Predictive DSIs, by contrast, generate recommendations (outputs) to support decision-making based on recognized patterns in the way the world actually works, filling in knowledge gaps with real world data. It’s up to humans then to determine the recommendation’s relevance in a given context. This makes predictive DSIs powerful tools because they can, at least in theory, be used to predict anything about which the technology collects data—whether that image looks like a tumor, whether a patient is likely to develop a specific disease, or whether a patient is likely to make it to their next appointment, to name a few. In part, because expert clinical guidelines have not been established for many topics, predictive DSIs can provide important guidance on a wide range of topics that evidence-based DSIs currently do not touch. At their best, predictive DSIs can identify patterns in data earlier or more precisely than health care professionals, or even uncover patterns not previously known, and recommend decisions across many facets of health care… Read the full article here.

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Jackie Gilbert
Jackie Gilbert
Jackie Gilbert is a Content Analyst for FedHealthIT and Author of 'Anything but COVID-19' on the Daily Take Newsletter for G2Xchange Health and FedCiv.

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