Publication | Closed Access
Temporal Context Matters: Enhancing Single Image Prediction with Disease Progression Representations
22
Citations
50
References
2022
Year
Convolutional Neural NetworkEngineeringMachine LearningAutoencodersImage AnalysisData SciencePattern RecognitionBiomedical Data ScienceSeverity PredictionSingle Image PredictionBiostatisticsClinical OutcomesVideo TransformerRadiologyDisease Progression RepresentationsHealth SciencesData AugmentationMachine VisionMedical ImagingFeature LearningPredictive AnalyticsDeep LearningMedical Image ComputingTemporal ImagingComputer VisionTemporal Context MattersData-driven Prediction
Clinical outcome or severity prediction from medical images has largely focused on learning representations from single-timepoint or snapshot scans. It has been shown that disease progression can be better characterized by temporal imaging. We therefore hypothesized that outcome predictions can be improved by utilizing the disease progression informationfrom sequential images. We present a deep learning approach that leverages temporal progression information to improve clinical outcome predictions from single-timepoint images. In our method, a self-attention based Temporal Convolutional Network (TCN) is used to learn a representation that is most reflective of the disease trajectory. Meanwhile, a Vision Transformer is pretrained in a self-supervised fashion to extract features from single-timepoint images. The key contribution is to design a recalibration module that employs maximum mean discrepancy loss (MMD) to align distributions of the above two contextual representations. We train our system to predict clinical outcomes and severity grades from single-timepoint images. Experiments on chest and osteoarthritis radiography datasets demonstrate that our approach outperforms other state-of-the-art techniques.
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