Develop predictive models of insulin dependence and salutogenesis
ID: B2AI_USECASE:29
Name: Develop predictive models of insulin dependence and salutogenesis.
Description: As presented by the AI-READI GC, this use case develops models capable of interpreting relationships between clinical observations of diabetes patients and their features, with a focus on insulin dependence. Its goal is to produce a model capable of yielding predictions about a given patient’s progression towards a health or disease state. This case depends upon availability of pseudotime models, unlike B2AI_USECASE:28.
Category: application
Involved in: Experimental Design, Metadata Management, Quality Control
Data Topics:
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B2AI_TOPIC:4 (Clinical Observations)
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B2AI_TOPIC:10 (EKG)
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B2AI_TOPIC:13 (Genome)
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B2AI_TOPIC:18 (mHealth)
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B2AI_TOPIC:24 (Ophthalmic Imaging)
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B2AI_TOPIC:29 (SDoH)
Enabled by:
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B2AI_USECASE:7 (Obtain genomics data from patients.)
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B2AI_USECASE:9 (Obtain social determinants of health data from patients.)
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B2AI_USECASE:17 (Standardize clinical record data collected from multiple sites and sources.)
Relevant to GCs:
- B2AI_ORG:114
Contributor: Harry Caufield (ORCID:0000-0001-5705-7831)