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Expert-level segmentation using deep learning for volumetry of polycystic kidney and liver

Authors :
Tae Young Shin
Hyunsuk Kim
Joong-Hyup Lee
Jong-Suk Choi
Hyun-Seok Min
Hyungjoo Cho
Kyungwook Kim
Geon Kang
Jungkyu Kim
Sieun Yoon
Hyungyu Park
Yeong Uk Hwang
Hyo Jin Kim
Miyeun Han
Eunjin Bae
Jong Woo Yoon
Koon Ho Rha
Yong Seong Lee
Source :
Investigative and Clinical Urology, Vol 61, Iss 6, Pp 555-564 (2020)
Publication Year :
2020
Publisher :
Korean Urological Association, 2020.

Abstract

Purpose: Volumetry is used in polycystic kidney and liver diseases (PKLDs), including autosomal dominant polycystic kidney disease (ADPKD), to assess disease progression and drug efficiency. However, since no rapid and accurate method for volumetry has been developed, volumetry has not yet been established in clinical practice, hindering the development of therapies for PKLD. This study presents an artificial intelligence (AI)-based volumetry method for PKLD. Materials and Methods: The performance of AI was first evaluated in comparison with ground-truth (GT). We trained a V-net-based convolutional neural network on 175 ADPKD computed tomography (CT) segmentations, which served as the GT and were agreed upon by 3 experts using images from 214 patients analyzed with volumetry. The dice similarity coefficient (DSC), interobserver correlation coefficient (ICC), and Bland–Altman plots of 39 GT and AI segmentations in the validation set were compared. Next, the performance of AI on the segmentation of 50 random CT images was compared with that of 11 PKLD specialists based on the resulting DSC and ICC. Results: The DSC and ICC of the AI were 0.961 and 0.999729, respectively. The error rate was within 3% for approximately 95% of the CT scans (error

Details

Language :
English
ISSN :
24660493 and 2466054X
Volume :
61
Issue :
6
Database :
Directory of Open Access Journals
Journal :
Investigative and Clinical Urology
Publication Type :
Academic Journal
Accession number :
edsdoj.87425f0f561e47f68e978716df1e676a
Document Type :
article
Full Text :
https://doi.org/10.4111/icu.20200086