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Assessing the predictive capacity of machine learning models using patient-specific variables in determining in-hospital outcomes after THA
2
Zitationen
5
Autoren
2023
Jahr
Abstract
Linear Support Vector Machine was the most responsive machine learning model of the 10 algorithms trained, while decision list was most reliable. Responsiveness was observed to be consistently higher with patient-specific variables than situational variables, emphasizing the predictive capacity and value of patient-specific variables. The current practice in machine learning literature generally deploys a single model, it is suboptimal to develop optimized models for application into clinical practice. The limitation of other algorithms may prohibit potential more reliable and responsive models.<i>Level of Evidence</i> III.
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