Classification of digital pathological images of non‐Hodgkin's lymphoma subtypes based on the fusion of transfer learning and principal component analysis
Medical Physics2020Vol. 47(9), pp. 4241–4253
Citations Over TimeTop 13% of 2020 papers
Abstract
The method proposed in this paper achieves a high classification accuracy and strong model generalization for the classification of NHL, which makes it possible to conduct intelligent classification of NHL in clinical practice. Our proposed method has definite clinical value and research significance.
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