Deep learning for automatically predicting early haematoma expansion in Chinese patients

Background and purpose Early haematoma expansion is determinative in predicting outcome of intracerebral haemorrhage (ICH) patients. The aims of this study are to develop a novel prediction model for haematoma expansion by applying deep learning model and validate its prediction accuracy.Methods Dat...

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Main Authors: Fang Chen, Jia-wei Zhong, Yu-jia Jin, Zai-jun Song, Bo Lin, Xiao-hui Lu, Lu-sha Tong
Format: Article
Language:English
Published: BMJ Publishing Group
Series:Stroke and Vascular Neurology
Online Access:https://svn.bmj.com/content/early/2021/01/31/svn-2020-000647.full
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spelling doaj-6cc611cc7ff44f72aa13831d9034dad92021-03-27T15:00:02ZengBMJ Publishing GroupStroke and Vascular Neurology2059-869610.1136/svn-2020-000647Deep learning for automatically predicting early haematoma expansion in Chinese patientsFang Chen0Jia-wei Zhong1Yu-jia Jin2Zai-jun Song3Bo Lin4Xiao-hui Lu5Lu-sha Tong6Department of Computer Science and Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing, ChinaDepartment of Neurology, Zhejiang University School of Medicine Second Affiliated Hospital, Hangzhou, ChinaDepartment of Neurology, Zhejiang University School of Medicine Second Affiliated Hospital, Hangzhou, ChinaDepartment of Neurology, Zhejiang University School of Medicine Second Affiliated Hospital, Hangzhou, ChinaCollege of Computer Science and Technology, Zhejiang University, Hangzhou, ChinaState Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University School of Mechanical Engineering, Hangzhou, ChinaDepartment of Neurology, Zhejiang University School of Medicine Second Affiliated Hospital, Hangzhou, ChinaBackground and purpose Early haematoma expansion is determinative in predicting outcome of intracerebral haemorrhage (ICH) patients. The aims of this study are to develop a novel prediction model for haematoma expansion by applying deep learning model and validate its prediction accuracy.Methods Data of this study were obtained from a prospectively enrolled cohort of patients with primary supratentorial ICH from our centre. We developed a deep learning model to predict haematoma expansion and compared its performance with conventional non-contrast CT (NCCT) markers. To evaluate the predictability of this model, it was also compared with a logistic regression model based on haematoma volume or the BAT score.Results A total of 266 patients were finally included for analysis, and 74 (27.8%) of them experienced early haematoma expansion. The deep learning model exhibited highest C statistic as 0.80, compared with 0.64, 0.65, 0.51, 0.58 and 0.55 for hypodensities, black hole sign, blend sign, fluid level and irregular shape, respectively. While the C statistics for swirl sign (0.70; p=0.211) and heterogenous density (0.70; p=0.141) were not significantly higher than that of the deep learning model. Moreover, the predictive value for the deep learning model was significantly superior to that of the logistic model of haematoma volume (0.62; p=0.042) and the BAT score (0.65; p=0.042).Conclusions Compared with the conventional NCCT markers and BAT predictive model, the deep learning algorithm showed superiority for predicting early haematoma expansion in ICH patients.https://svn.bmj.com/content/early/2021/01/31/svn-2020-000647.full
collection DOAJ
language English
format Article
sources DOAJ
author Fang Chen
Jia-wei Zhong
Yu-jia Jin
Zai-jun Song
Bo Lin
Xiao-hui Lu
Lu-sha Tong
spellingShingle Fang Chen
Jia-wei Zhong
Yu-jia Jin
Zai-jun Song
Bo Lin
Xiao-hui Lu
Lu-sha Tong
Deep learning for automatically predicting early haematoma expansion in Chinese patients
Stroke and Vascular Neurology
author_facet Fang Chen
Jia-wei Zhong
Yu-jia Jin
Zai-jun Song
Bo Lin
Xiao-hui Lu
Lu-sha Tong
author_sort Fang Chen
title Deep learning for automatically predicting early haematoma expansion in Chinese patients
title_short Deep learning for automatically predicting early haematoma expansion in Chinese patients
title_full Deep learning for automatically predicting early haematoma expansion in Chinese patients
title_fullStr Deep learning for automatically predicting early haematoma expansion in Chinese patients
title_full_unstemmed Deep learning for automatically predicting early haematoma expansion in Chinese patients
title_sort deep learning for automatically predicting early haematoma expansion in chinese patients
publisher BMJ Publishing Group
series Stroke and Vascular Neurology
issn 2059-8696
description Background and purpose Early haematoma expansion is determinative in predicting outcome of intracerebral haemorrhage (ICH) patients. The aims of this study are to develop a novel prediction model for haematoma expansion by applying deep learning model and validate its prediction accuracy.Methods Data of this study were obtained from a prospectively enrolled cohort of patients with primary supratentorial ICH from our centre. We developed a deep learning model to predict haematoma expansion and compared its performance with conventional non-contrast CT (NCCT) markers. To evaluate the predictability of this model, it was also compared with a logistic regression model based on haematoma volume or the BAT score.Results A total of 266 patients were finally included for analysis, and 74 (27.8%) of them experienced early haematoma expansion. The deep learning model exhibited highest C statistic as 0.80, compared with 0.64, 0.65, 0.51, 0.58 and 0.55 for hypodensities, black hole sign, blend sign, fluid level and irregular shape, respectively. While the C statistics for swirl sign (0.70; p=0.211) and heterogenous density (0.70; p=0.141) were not significantly higher than that of the deep learning model. Moreover, the predictive value for the deep learning model was significantly superior to that of the logistic model of haematoma volume (0.62; p=0.042) and the BAT score (0.65; p=0.042).Conclusions Compared with the conventional NCCT markers and BAT predictive model, the deep learning algorithm showed superiority for predicting early haematoma expansion in ICH patients.
url https://svn.bmj.com/content/early/2021/01/31/svn-2020-000647.full
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