| Literature DB >> 31028058 |
Hanadi El Achi1, Tatiana Belousova1, Lei Chen1, Amer Wahed1, Iris Wang1, Zhihong Hu1, Zeyad Kanaan2, Adan Rios2, Andy N D Nguyen3.
Abstract
Recent studies have shown promising results in using Deep Learning to detect malignancy in whole slide imaging, however, they were limited to just predicting a positive or negative finding for a specific neoplasm. We attempted to use Deep Learning with a convolutional neural network (CNN) algorithm to build a lymphoma diagnostic model for four diagnostic categories: (1) benign lymph node, (2) diffuse large B-cell lymphoma, (3) Burkitt lymphoma, and (4) small lymphocytic lymphoma. Our software was written in Python language. We obtained digital whole-slide images of Hematoxylin and Eosin stained slides of 128 cases including 32 cases for each diagnostic category. Four sets of 5 representative images, 40x40 pixels in dimension, were taken for each case. A total of 2,560 images were obtained from which 1,856 were used for training, 464 for validation, and 240 for testing. For each test set of 5 images, the predicted diagnosis was combined from the prediction of five images. The test results showed excellent diagnostic accuracy at 95% for image-by-image prediction and at 100% for set-by-set prediction. This preliminary study provided a proof of concept for incorporating automated lymphoma diagnostic screen into future pathology work-flow to augment the pathologists' productivity.Entities:
Keywords: Deep Learning; Lymphoma Diagnosis; Whole Slide Imaging
Mesh:
Year: 2019 PMID: 31028058
Source DB: PubMed Journal: Ann Clin Lab Sci ISSN: 0091-7370 Impact factor: 1.256