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Adaptive magnification network for precise tumor analysis in histopathological images

Authors
Iqbal, SaeedQureshi, Adnan N.Aurangzeb, KhursheedAlhussein, MusaedAnwar, Muhammad ShahidZhang, YudongSyed, Ikram
Issue Date
Jul-2024
Publisher
PERGAMON-ELSEVIER SCIENCE LTD
Keywords
Breast cancer histopathology; Magnification invariance; Stain normalization; Multi-level features; Cancer diagnostics; Histopathological images
Citation
COMPUTERS IN HUMAN BEHAVIOR, v.156
Journal Title
COMPUTERS IN HUMAN BEHAVIOR
Volume
156
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/91494
DOI
10.1016/j.chb.2024.108222
ISSN
0747-5632
1873-7692
Abstract
The variable magnification levels in histopathology images make it difficult to accurately categorize tumor regions in breast cancer histology. In this study, a novel architecture for accurate image interpretation MagNet is presented. With specific modules like Separable Dilation Convolution (SDC), Separable Dilation Skip Block (SDSB), and Point -wise Reformation Block (PRB), MagNet uses a Parallel U -Net (PU-Net) infrastructure. SDC in the PU-Net encoder ensures downsampled generalized feature representations by capturing characteristic attributes at varying magnifications. Using feature upsampling, attribute mapping merging, and PRB for precise feature capture, the decoder improves reconstruction. While PRB combines data from several decoder levels, SDSB creates vital links between the encoder and decoder layers. MagNet requires less processing of histopathology images and improves multi -magnification feature maps. MagNet performs exceptionally well, constantly outperforming rivals in terms of accuracy (0.98), F1 score (0.97), sensitivity (0.96), and specificity (0.97). The effectiveness of MagNet and its revolutionary potential in cancer diagnostics are shown by these quantitative data.
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