Contribution of whole slide imaging‐based deep learning in the assessment of intraoperative and postoperative sections in neuropathology

Author:

Shi Liting12,Shen Lin3,Jian Junming2,Xia Wei245,Yang Ke‐Da6,Tian Yifu6,Huang Jianghai7,Yuan Bowen8,Shen Liangfang3,Liu Zhengzheng3,Zhang Jiayi1245,Zhang Rui12,Wu Keqing12,Jing Di3,Gao Xin245ORCID

Affiliation:

1. School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine University of Science and Technology of China Hefei China

2. Suzhou Institute of Biomedical Engineering and Technology Chinese Academy of Sciences Suzhou China

3. Department of Oncology, National Clinical Research Center for Geriatric Disorders, Xiangya Hospital Central South University Changsha China

4. Jinan Guoke Medical Engineering and Technology Development Co., Ltd. Jinan China

5. Department of Radiology, Shanxi Province Cancer Hospital Shanxi Medical University Taiyuan China

6. Department of Pathology, Xiangya Hospital Central South University Changsha China

7. Department of Pathology, the Second Xiangya Hospital Central South University Changsha China

8. Department of Pathology, The Third Xiangya Hospital Central South University Changsha China

Abstract

AbstractThe pathological diagnosis of intracranial germinoma (IG), oligodendroglioma, and low‐grade astrocytoma on intraoperative frozen section (IFS) and hematoxylin–eosin (HE)‐staining section directly determines patients' treatment options, but it is a difficult task for pathologists. We aimed to investigate whether whole‐slide imaging (WSI)‐based deep learning can contribute new precision to the diagnosis of IG, oligodendroglioma, and low‐grade astrocytoma. Two types of WSIs (500 IFSs and 832 HE‐staining sections) were collected from 379 patients at multiple medical centers. Patients at Center 1 were split into the training, testing, and internal validation sets (3:1:1), while the other centers were the external validation sets. First, we subdivided WSIs into small tiles and selected tissue tiles using a tissue tile selection model. Then a tile‐level classification model was established, and the majority voting method was used to determine the final diagnoses. Color jitter was applied to the tiles so that the deep learning (DL) models could adapt to the variations in the staining. Last, we investigated the effectiveness of model assistance. The internal validation accuracies of the IFS and HE models were 93.9% and 95.3%, respectively. The external validation accuracies of the IFS and HE models were 82.0% and 76.9%, respectively. Furthermore, the IFS and HE models can predict Ki‐67 positive cell areas with R2 of 0.81 and 0.86, respectively. With model assistance, the IFS and HE diagnosis accuracy of pathologists improved from 54.6%–69.7% and 53.5%–83.7% to 87.9%–93.9% and 86.0%–90.7%, respectively. Both the IFS model and the HE model can differentiate the three tumors, predict the expression of Ki‐67, and improve the diagnostic accuracy of pathologists. The use of our model can assist clinicians in providing patients with optimal and timely treatment options.

Funder

National Natural Science Foundation of China

Key Technology Research and Development Program of Shandong

Publisher

Wiley

Subject

Neurology (clinical),Pathology and Forensic Medicine,General Neuroscience

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