Literature DB >> 32472096

Deep learning shows the capability of high-level computer-aided diagnosis in malignant lymphoma.

Hiroaki Miyoshi1, Kensaku Sato2, Yoshinori Kabeya3, Sho Yonezawa3, Hiroki Nakano3, Yusuke Takeuchi4, Issei Ozawa3, Shoichi Higo5, Eriko Yanagida2, Kyohei Yamada2, Kei Kohno2, Takuya Furuta2, Hiroko Muta2, Mai Takeuchi2, Yuya Sasaki2, Takuro Yoshimura2,6, Kotaro Matsuda2, Reiji Muto2, Mayuko Moritsubo2, Kanako Inoue2, Takaharu Suzuki2, Hiroaki Sekinaga7, Koichi Ohshima2.   

Abstract

A pathological evaluation is one of the most important methods for the diagnosis of malignant lymphoma. A standardized diagnosis is occasionally difficult to achieve even by experienced hematopathologists. Therefore, established procedures including a computer-aided diagnosis are desired. This study aims to classify histopathological images of malignant lymphomas through deep learning, which is a computer algorithm and type of artificial intelligence (AI) technology. We prepared hematoxylin and eosin (H&E) slides of a lesion area from 388 sections, namely, 259 with diffuse large B-cell lymphoma, 89 with follicular lymphoma, and 40 with reactive lymphoid hyperplasia, and created whole slide images (WSIs) using a whole slide system. WSI was annotated in the lesion area by experienced hematopathologists. Image patches were cropped from the WSI to train and evaluate the classifiers. Image patches at magnifications of ×5, ×20, and ×40 were randomly divided into a test set and a training and evaluation set. The classifier was assessed using the test set through a cross-validation after training. The classifier achieved the highest levels of accuracy of 94.0%, 93.0%, and 92.0% for image patches with magnifications of ×5, ×20, and ×40, respectively, in comparison to diffuse large B-cell lymphoma, follicular lymphoma, and reactive lymphoid hyperplasia. Comparing the diagnostic accuracies between the proposed classifier and seven pathologists, including experienced hematopathologists, using the test set made up of image patches with magnifications of ×5, ×20, and ×40, the best accuracy demonstrated by the classifier was 97.0%, whereas the average accuracy achieved by the pathologists using WSIs was 76.0%, with the highest accuracy reaching 83.3%. In conclusion, the neural classifier can outperform pathologists in a morphological evaluation. These results suggest that the AI system can potentially support the diagnosis of malignant lymphoma.

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Year:  2020        PMID: 32472096     DOI: 10.1038/s41374-020-0442-3

Source DB:  PubMed          Journal:  Lab Invest        ISSN: 0023-6837            Impact factor:   5.662


  1 in total

1.  Automated Diagnosis of Lymphoma with Digital Pathology Images Using Deep Learning.

Authors:  Hanadi El Achi; Tatiana Belousova; Lei Chen; Amer Wahed; Iris Wang; Zhihong Hu; Zeyad Kanaan; Adan Rios; Andy N D Nguyen
Journal:  Ann Clin Lab Sci       Date:  2019-03       Impact factor: 1.256

  1 in total
  8 in total

1.  Artificial intelligence-assisted mapping of proliferation centers allows the distinction of accelerated phase from large cell transformation in chronic lymphocytic leukemia.

Authors:  Siba El Hussein; Pingjun Chen; L Jeffrey Medeiros; John D Hazle; Jia Wu; Joseph D Khoury
Journal:  Mod Pathol       Date:  2022-02-07       Impact factor: 8.209

2.  Chronic Lymphocytic Leukemia Progression Diagnosis with Intrinsic Cellular Patterns via Unsupervised Clustering.

Authors:  Pingjun Chen; Siba El Hussein; Fuyong Xing; Muhammad Aminu; Aparajith Kannapiran; John D Hazle; L Jeffrey Medeiros; Ignacio I Wistuba; David Jaffray; Joseph D Khoury; Jia Wu
Journal:  Cancers (Basel)       Date:  2022-05-13       Impact factor: 6.575

3.  Artificial intelligence strategy integrating morphologic and architectural biomarkers provides robust diagnostic accuracy for disease progression in chronic lymphocytic leukemia.

Authors:  Siba El Hussein; Pingjun Chen; L Jeffrey Medeiros; Ignacio I Wistuba; David Jaffray; Jia Wu; Joseph D Khoury
Journal:  J Pathol       Date:  2021-10-25       Impact factor: 9.883

4.  Subtype classification of malignant lymphoma using immunohistochemical staining pattern.

Authors:  Noriaki Hashimoto; Kaho Ko; Tatsuya Yokota; Kei Kohno; Masato Nakaguro; Shigeo Nakamura; Ichiro Takeuchi; Hidekata Hontani
Journal:  Int J Comput Assist Radiol Surg       Date:  2022-02-11       Impact factor: 3.421

5.  Diagnostic accuracy of deep-learning with anomaly detection for a small amount of imbalanced data: discriminating malignant parotid tumors in MRI.

Authors:  Hidetoshi Matsuo; Mizuho Nishio; Tomonori Kanda; Yasuyuki Kojita; Atsushi K Kono; Masatoshi Hori; Masanori Teshima; Naoki Otsuki; Ken-Ichi Nibu; Takamichi Murakami
Journal:  Sci Rep       Date:  2020-11-09       Impact factor: 4.379

Review 6.  A Review of Artificial Intelligence Applications in Hematology Management: Current Practices and Future Prospects.

Authors:  Yousra El Alaoui; Adel Elomri; Marwa Qaraqe; Regina Padmanabhan; Ruba Yasin Taha; Halima El Omri; Abdelfatteh El Omri; Omar Aboumarzouk
Journal:  J Med Internet Res       Date:  2022-07-12       Impact factor: 7.076

7.  Deep Learning in Pancreatic Tissue: Identification of Anatomical Structures, Pancreatic Intraepithelial Neoplasia, and Ductal Adenocarcinoma.

Authors:  Mark Kriegsmann; Katharina Kriegsmann; Georg Steinbuss; Christiane Zgorzelski; Anne Kraft; Matthias M Gaida
Journal:  Int J Mol Sci       Date:  2021-05-20       Impact factor: 5.923

8.  Deep Learning for the Classification of Non-Hodgkin Lymphoma on Histopathological Images.

Authors:  Georg Steinbuss; Mark Kriegsmann; Christiane Zgorzelski; Alexander Brobeil; Benjamin Goeppert; Sascha Dietrich; Gunhild Mechtersheimer; Katharina Kriegsmann
Journal:  Cancers (Basel)       Date:  2021-05-17       Impact factor: 6.639

  8 in total

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