Modeling clinical judgment and implicit guideline compliance in the diagnosis of melanomas using machine learning.

TitleModeling clinical judgment and implicit guideline compliance in the diagnosis of melanomas using machine learning.
Publication TypeJournal Article
Year of Publication2005
AuthorsSboner A, Aliferis CF
JournalAMIA Annu Symp Proc
Pagination664-8
Date Published2005
ISSN1942-597X
KeywordsArtificial Intelligence, Decision Making, Decision Support Techniques, Decision Trees, Guideline Adherence, Humans, Judgment, Melanoma, Pattern Recognition, Visual, Practice Guidelines as Topic, Skin Neoplasms
Abstract

We explore several machine learning techniques to model clinical decision making of 6 dermatologists in the clinical task of melanoma diagnosis of 177 pigmented skin lesions (76 malignant, 101 benign). In particular we apply Support Vector Machine (SVM) classifiers to model clinician judgments, Markov Blanket and SVM feature selection to eliminate clinical features that are effectively ignored by the dermatologists, and a novel explanation technique whereby regression tree induction is run on the reduced SVM model's output to explain the physicians' implicit patterns of decision making. Our main findings include: (a) clinician judgments can be accurately predicted, (b) subtle decision making rules are revealed enabling the explanation of differences of opinion among physicians, and (c) physician judgment is non-compliant with the diagnostic guidelines that physicians self-report as guiding their decision making.

Alternate JournalAMIA Annu Symp Proc
PubMed ID16779123
PubMed Central IDPMC1560780
Related Faculty: 
Andrea Sboner, Ph.D.

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