Publication | Open Access
Explaining Machine Learning-Based Classifications of In-Vivo Gastral Images
36
Citations
15
References
2019
Year
Unknown Venue
EngineeringMachine LearningIn-vivo Gastral ImagesImage ClassificationImage AnalysisData SciencePattern RecognitionAi HealthcareRadiologyHealth SciencesMedical ImagingVisual DiagnosisDeep LearningMedical Image ComputingComputer VisionBiomedical ImagingConvolutional Neural NetworksComputer-aided DiagnosisMedical Image Analysis
This paper proposes an explainable machine learning tool that can potentially be used for decision support in medical image analysis scenarios. For a decision-support system it is important to be able to reverse-engineer the impact of features on the final decision outcome. In the medical domain, such functionality is typically required to allow applying machine learning to clinical decision making. In this paper, we present initial experiments that have been performed on in-vivo gastral images obtained from capsule endoscopy. Quantitative analysis has been performed to evaluate the utility of the proposed method. Convolutional neural networks have been used for training the validating of the image data set to provide the bleeding classifications. The visual explanations have been provided in the images to help health professionals trust the black box predictions. While the paper focuses on the in-vivo gastral image use case, most findings are generalizable.
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