Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography

Abstract In 2020, it is estimated that 73,750 kidney cancer cases were diagnosed, and 14,830 people died from cancer in the United States. Preoperative multi-phase abdominal computed tomography (CT) is often used for detecting lesions and classifying histologic subtypes of renal tumor to avoid unnec...

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Main Authors: Kwang-Hyun Uhm, Seung-Won Jung, Moon Hyung Choi, Hong-Kyu Shin, Jae-Ik Yoo, Se Won Oh, Jee Young Kim, Hyun Gi Kim, Young Joon Lee, Seo Yeon Youn, Sung-Hoo Hong, Sung-Jea Ko
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:npj Precision Oncology
Online Access:https://doi.org/10.1038/s41698-021-00195-y
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spelling doaj-b233852307e7463aa595188f0f21eff12021-06-20T11:09:18ZengNature Publishing Groupnpj Precision Oncology2397-768X2021-06-01511610.1038/s41698-021-00195-yDeep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomographyKwang-Hyun Uhm0Seung-Won Jung1Moon Hyung Choi2Hong-Kyu Shin3Jae-Ik Yoo4Se Won Oh5Jee Young Kim6Hyun Gi Kim7Young Joon Lee8Seo Yeon Youn9Sung-Hoo Hong10Sung-Jea Ko11Department of Electrical Engineering, Korea UniversityDepartment of Electrical Engineering, Korea UniversityDepartment of Radiology, The Catholic University of KoreaDepartment of Electrical Engineering, Korea UniversityDepartment of Electrical Engineering, Korea UniversityDepartment of Radiology, The Catholic University of KoreaDepartment of Radiology, The Catholic University of KoreaDepartment of Radiology, The Catholic University of KoreaDepartment of Radiology, The Catholic University of KoreaDepartment of Radiology, The Catholic University of KoreaDepartment of Urology, The Catholic University of KoreaDepartment of Electrical Engineering, Korea UniversityAbstract In 2020, it is estimated that 73,750 kidney cancer cases were diagnosed, and 14,830 people died from cancer in the United States. Preoperative multi-phase abdominal computed tomography (CT) is often used for detecting lesions and classifying histologic subtypes of renal tumor to avoid unnecessary biopsy or surgery. However, there exists inter-observer variability due to subtle differences in the imaging features of tumor subtypes, which makes decisions on treatment challenging. While deep learning has been recently applied to the automated diagnosis of renal tumor, classification of a wide range of subtype classes has not been sufficiently studied yet. In this paper, we propose an end-to-end deep learning model for the differential diagnosis of five major histologic subtypes of renal tumors including both benign and malignant tumors on multi-phase CT. Our model is a unified framework to simultaneously identify lesions and classify subtypes for the diagnosis without manual intervention. We trained and tested the model using CT data from 308 patients who underwent nephrectomy for renal tumors. The model achieved an area under the curve (AUC) of 0.889, and outperformed radiologists for most subtypes. We further validated the model on an independent dataset of 184 patients from The Cancer Imaging Archive (TCIA). The AUC for this dataset was 0.855, and the model performed comparably to the radiologists. These results indicate that our model can achieve similar or better diagnostic performance than radiologists in differentiating a wide range of renal tumors on multi-phase CT.https://doi.org/10.1038/s41698-021-00195-y
collection DOAJ
language English
format Article
sources DOAJ
author Kwang-Hyun Uhm
Seung-Won Jung
Moon Hyung Choi
Hong-Kyu Shin
Jae-Ik Yoo
Se Won Oh
Jee Young Kim
Hyun Gi Kim
Young Joon Lee
Seo Yeon Youn
Sung-Hoo Hong
Sung-Jea Ko
spellingShingle Kwang-Hyun Uhm
Seung-Won Jung
Moon Hyung Choi
Hong-Kyu Shin
Jae-Ik Yoo
Se Won Oh
Jee Young Kim
Hyun Gi Kim
Young Joon Lee
Seo Yeon Youn
Sung-Hoo Hong
Sung-Jea Ko
Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
npj Precision Oncology
author_facet Kwang-Hyun Uhm
Seung-Won Jung
Moon Hyung Choi
Hong-Kyu Shin
Jae-Ik Yoo
Se Won Oh
Jee Young Kim
Hyun Gi Kim
Young Joon Lee
Seo Yeon Youn
Sung-Hoo Hong
Sung-Jea Ko
author_sort Kwang-Hyun Uhm
title Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
title_short Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
title_full Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
title_fullStr Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
title_full_unstemmed Deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
title_sort deep learning for end-to-end kidney cancer diagnosis on multi-phase abdominal computed tomography
publisher Nature Publishing Group
series npj Precision Oncology
issn 2397-768X
publishDate 2021-06-01
description Abstract In 2020, it is estimated that 73,750 kidney cancer cases were diagnosed, and 14,830 people died from cancer in the United States. Preoperative multi-phase abdominal computed tomography (CT) is often used for detecting lesions and classifying histologic subtypes of renal tumor to avoid unnecessary biopsy or surgery. However, there exists inter-observer variability due to subtle differences in the imaging features of tumor subtypes, which makes decisions on treatment challenging. While deep learning has been recently applied to the automated diagnosis of renal tumor, classification of a wide range of subtype classes has not been sufficiently studied yet. In this paper, we propose an end-to-end deep learning model for the differential diagnosis of five major histologic subtypes of renal tumors including both benign and malignant tumors on multi-phase CT. Our model is a unified framework to simultaneously identify lesions and classify subtypes for the diagnosis without manual intervention. We trained and tested the model using CT data from 308 patients who underwent nephrectomy for renal tumors. The model achieved an area under the curve (AUC) of 0.889, and outperformed radiologists for most subtypes. We further validated the model on an independent dataset of 184 patients from The Cancer Imaging Archive (TCIA). The AUC for this dataset was 0.855, and the model performed comparably to the radiologists. These results indicate that our model can achieve similar or better diagnostic performance than radiologists in differentiating a wide range of renal tumors on multi-phase CT.
url https://doi.org/10.1038/s41698-021-00195-y
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