One Step at a Time: Exploring Multiple Ways to Improve a Machine Learning Model to Predict a Future Autism Diagnosis

October 28, 2024
12:00 pm to 1:00 pm

Event sponsored by:

Computational Biology and Bioinformatics (CBB)
AI Health
Biostatistics and Bioinformatics
Duke Center for Genomic and Computational Biology (GCB)
Duke Clinical Research Institute (DCRI)
Population Health Sciences
Precision Genomics Collaboratory
School of Medicine (SOM)

Contact:

Franklin, Monica

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Pictured is Dr. Ben Goldstein, a man with light skin short black hair, smiling and wearing a maroon and white striped polo shirt

Speaker:

Ben Goldstein
Early autism screening is an important part of pediatric primary care that can help direct children into services. Currently, most autism screening is conducted via the M-Chat, a provider administered questionnaire. While useful, the M-Chat is prone to inconsistent and misuse. Epidemiologic work has shown that autistic children have early life clinical experiences that can be indicative of a future autism diagnosis. Such encounter data can be used to promote an automated, health system based, screening tool. Nonetheless, predicting a future autism diagnosis is challenging due to the rarity and complexity of the outcome. In this talk, I discuss a variety of ways we are working to improve a machine learning based prediction model for autism. We touch on topics of data representation, borrowing from related conditions & data sources, and addressing algorithmic bias.

CBB Monday Seminar Series