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Machine-learning methods can assist with the medical decision-making processes at the both the clinical and diagnostic levels. In this article, we first review historical milestones and specific applications of computer-based medical decision support tools in both veterinary and human medicine. Next, we take a mechanistic look at 3 archetypal learning algorithms-naive Bayes, decision trees, and neural network-commonly used to power these medical decision support tools. Last, we focus our discussion on the data sets used to train these algorithms and examine methods for validation, data representation, transformation, and feature selection. From this review, the reader should gain some appreciation for how these decision support tools have and can be used in medicine along with insight on their inner workings.
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Awaysheh et al. (Wed,) studied this question.
synapsesocial.com/papers/69ffd27ab124fe581985a251 — DOI: https://doi.org/10.1177/0300985819829524
Abdullah Awaysheh
Virginia–Maryland College of Veterinary Medicine
Jeffrey R. Wilcke
Virginia–Maryland College of Veterinary Medicine
François Elvinger
Cornell University
Veterinary Pathology
Cornell University
Virginia Tech
Virginia–Maryland College of Veterinary Medicine
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