Influence of uncertainty estimation techniques on false-positive
reduction in liver lesion detection
- URL: http://arxiv.org/abs/2206.10911v1
- Date: Wed, 22 Jun 2022 08:33:52 GMT
- Title: Influence of uncertainty estimation techniques on false-positive
reduction in liver lesion detection
- Authors: Ishaan Bhat, Josien P.W. Pluim, Max A. Viergerver, Hugo J. Kuijf
- Abstract summary: We develop a classification-based post-processing step for different uncertainty estimation methods.
We show that features computed from neural network uncertainty estimates tend not to contribute much toward reducing false positives.
Our results show that factors like class imbalance (true over false positive ratio) and shape-based features extracted from uncertainty maps play an important role in distinguishing false positive from true positive predictions.
- Score: 3.0236161684282497
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Deep learning techniques show success in detecting objects in medical images,
but still suffer from false-positive predictions that may hinder accurate
diagnosis. The estimated uncertainty of the neural network output has been used
to flag incorrect predictions. We study the role played by features computed
from neural network uncertainty estimates and shape-based features computed
from binary predictions in reducing false positives in liver lesion detection
by developing a classification-based post-processing step for different
uncertainty estimation methods. We demonstrate an improvement in the lesion
detection performance of the neural network (with respect to F1-score) for all
uncertainty estimation methods on two datasets, comprising abdominal MR and CT
images respectively. We show that features computed from neural network
uncertainty estimates tend not to contribute much toward reducing false
positives. Our results show that factors like class imbalance (true over false
positive ratio) and shape-based features extracted from uncertainty maps play
an important role in distinguishing false positive from true positive
predictions
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