Parallel Medical Imaging for Intelligent Medical Image Analysis: Concepts, Methods, and Applications
There has been much progress in data-driven artificial intelligence technology for medical image analysis in the last decades. However, it still remains challenging due to its distinctive complexity of acquiring and annotating image data, extracting medical domain knowledge, and explaining the diagn...
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Zusammenfassung: | There has been much progress in data-driven artificial intelligence
technology for medical image analysis in the last decades. However, it still
remains challenging due to its distinctive complexity of acquiring and
annotating image data, extracting medical domain knowledge, and explaining the
diagnostic decision for medical image analysis. In this paper, we propose a
data-knowledge-driven framework termed as Parallel Medical Imaging (PMI) for
intelligent medical image analysis based on the methodology of interactive
ACP-based parallel intelligence. In the PMI framework, computational
experiments with predictive learning in a data-driven way are conducted to
extract medical knowledge for diagnostic decision support. Artificial imaging
systems are introduced to select and prescriptively generate medical image data
in a knowledge-driven way to utilize medical domain knowledge. Through the
closed-loop optimization based on parallel execution, our proposed PMI
framework can boost the generalization ability and alleviate the limitation of
medical interpretation for diagnostic decisions. Furthermore, we illustrate the
preliminary implementation of PMI method through the case studies of mammogram
analysis and skin lesion image analysis. Experimental results on several public
medical image datasets demonstrate the effectiveness of proposed PMI. |
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DOI: | 10.48550/arxiv.1903.04855 |