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Apple Watch, ML Can Predict Pain in Sickle Cell Disease Patients

Researchers used data collected from Apple Watches and machine learning analyses to predict pain in people with sickle cell disease.

AI predictive analytics Apple Watch

Source: Getty Images

By Shania Kennedy

- In a paper published earlier this month in JMIR Formative Research, researchers explored the feasibility of using the Apple Watch to predict pain scores in hospitalized sickle cell disease patients and leveraging these scores to build machine-learning (ML) algorithms to predict the pain scores associated with vaso-occlusive crises (VOCs).

According to the Centers for Disease Control and Prevention (CDC), sickle cell disease refers to inherited red blood cell disorders characterized by abnormal hemoglobin, resulting in hard, sticky, C-shaped red blood cells. The disease is associated with potentially severe complications, such as stroke, blood clots, anemia, infection, vision loss, and pain.

In this study, the researchers also noted that VOCs are a serious complication and the leading cause of hospitalization for individuals with sickle cell disease. The Indiana Hemophilia & Thrombosis Center indicates that VOCs often present as acute pain syndromes in the emergency department settings, but they can be difficult to diagnose and treat because there are no laboratory tests or clinical findings for the indication of VOCs.