Predicting Coronary Stenosis Progression Using Plaque Fatigue From IVUS-Based Thin-Slice Models: A Machine Learning Random Forest Approach

Xiaoya Guo, Akiko Maehara, Mingming Yang, Liang Wang, Jie Zheng, Habib Samady, Gary S. Mintz, Don P. Giddens, Dalin Tang

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2 Scopus citations

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Medicine and Dentistry

Neuroscience

Biochemistry, Genetics and Molecular Biology