Publication | Open Access
Deep medical image analysis with representation learning and neuromorphic computing
17
Citations
9
References
2020
Year
Convolutional Neural NetworkMedical Image SegmentationAnomaly DetectionMachine LearningEngineeringDiagnostic ImagingMagnetic Resonance ImagingRepresentation LearningImage AnalysisNeuromorphic EngineeringNeurocomputersRadiologyHealth SciencesMachine VisionMedical ImagingNeuroimagingNeuromorphic ComputingMedical Image ComputingDeep LearningBiomedical ComputingComputer VisionRadiomicsComputational NeuroscienceBiomedical ImagingComputer-aided DiagnosisNeuroscienceBrain-like ComputingMedical Image Analysis
Deep learning is increasingly used in medical imaging, improving many steps of the processing chain, from acquisition to segmentation and anomaly detection to outcome prediction. Yet significant challenges remain: (i) image-based diagnosis depends on the spatial relationships between local patterns, something convolution and pooling often do not capture adequately; (ii) data augmentation, the de facto method for learning three-dimensional pose invariance, requires exponentially many points to achieve robust improvement; (iii) labelled medical images are much less abundant than unlabelled ones, especially for heterogeneous pathological cases; and (iv) scanning technologies such as magnetic resonance imaging can be slow and costly, generally without online learning abilities to focus on regions of clinical interest. To address these challenges, novel algorithmic and hardware approaches are needed for deep learning to reach its full potential in medical imaging.
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