Boosting the Rule-Out Accuracy of Deep Disease Detection Using Class Weight Modifiers
Published: Apr 1, 2019
Abstract
In many screening applications, the primary goal of a radiologist or assisting artificial intelligence is to rule out certain findings. The classifiers built for such applications are often trained on large datasets that derive labels from clinical notes written for patients. While the quality of the positive findings described in these notes is often reliable, lack of the mention of a finding does not always rule out the presence of it. This...
Paper Details
Title
Boosting the Rule-Out Accuracy of Deep Disease Detection Using Class Weight Modifiers
Published Date
Apr 1, 2019
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