Effectiveness of transfer learning for enhancing tumor classification with a convolutional neural network on frozen sections

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作者
Young-Gon Kim
Sungchul Kim
Cristina Eunbee Cho
In Hye Song
Hee Jin Lee
Soomin Ahn
So Yeon Park
Gyungyub Gong
Namkug Kim
机构
[1] Seoul National University Hospital,Transdisciplinary Department of Medicine & Advanced Technology
[2] University of Ulsan College of Medicine,Department of Convergence Medicine, Asan Institute of Life Science
[3] Asan Medical Center,Department of Hospital Pathology, Seoul St. Mary’s Hospital, College of Medicine
[4] The Catholic University of Korea,Department of Pathology
[5] University of Ulsan,Department of Pathology, Seoul National University Bundang Hospital
[6] College of Medicine,undefined
[7] Asan Medical Center,undefined
[8] Seoul National University College of Medicine,undefined
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摘要
Fast and accurate confirmation of metastasis on the frozen tissue section of intraoperative sentinel lymph node biopsy is an essential tool for critical surgical decisions. However, accurate diagnosis by pathologists is difficult within the time limitations. Training a robust and accurate deep learning model is also difficult owing to the limited number of frozen datasets with high quality labels. To overcome these issues, we validated the effectiveness of transfer learning from CAMELYON16 to improve performance of the convolutional neural network (CNN)-based classification model on our frozen dataset (N = 297) from Asan Medical Center (AMC). Among the 297 whole slide images (WSIs), 157 and 40 WSIs were used to train deep learning models with different dataset ratios at 2, 4, 8, 20, 40, and 100%. The remaining, i.e., 100 WSIs, were used to validate model performance in terms of patch- and slide-level classification. An additional 228 WSIs from Seoul National University Bundang Hospital (SNUBH) were used as an external validation. Three initial weights, i.e., scratch-based (random initialization), ImageNet-based, and CAMELYON16-based models were used to validate their effectiveness in external validation. In the patch-level classification results on the AMC dataset, CAMELYON16-based models trained with a small dataset (up to 40%, i.e., 62 WSIs) showed a significantly higher area under the curve (AUC) of 0.929 than those of the scratch- and ImageNet-based models at 0.897 and 0.919, respectively, while CAMELYON16-based and ImageNet-based models trained with 100% of the training dataset showed comparable AUCs at 0.944 and 0.943, respectively. For the external validation, CAMELYON16-based models showed higher AUCs than those of the scratch- and ImageNet-based models. Model performance for slide feasibility of the transfer learning to enhance model performance was validated in the case of frozen section datasets with limited numbers.
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