Literature DB >> 33328125

Multiclass semantic segmentation and quantification of traumatic brain injury lesions on head CT using deep learning: an algorithm development and multicentre validation study.

Miguel Monteiro1, Virginia F J Newcombe2, Francois Mathieu2, Krishma Adatia2, Konstantinos Kamnitsas3, Enzo Ferrante4, Tilak Das2, Daniel Whitehouse2, Daniel Rueckert3, David K Menon2, Ben Glocker3.   

Abstract

BACKGROUND: CT is the most common imaging modality in traumatic brain injury (TBI). However, its conventional use requires expert clinical interpretation and does not provide detailed quantitative outputs, which may have prognostic importance. We aimed to use deep learning to reliably and efficiently quantify and detect different lesion types.
METHODS: Patients were recruited between Dec 9, 2014, and Dec 17, 2017, in 60 centres across Europe. We trained and validated an initial convolutional neural network (CNN) on expert manual segmentations (dataset 1). This CNN was used to automatically segment a new dataset of scans, which we then corrected manually (dataset 2). From this dataset, we used a subset of scans to train a final CNN for multiclass, voxel-wise segmentation of lesion types. The performance of this CNN was evaluated on a test subset. Performance was measured for lesion volume quantification, lesion progression, and lesion detection and lesion volume classification. For lesion detection, external validation was done on an independent set of 500 patients from India.
FINDINGS: 98 scans from one centre were included in dataset 1. Dataset 2 comprised 839 scans from 38 centres: 184 scans were used in the training subset and 655 in the test subset. Compared with manual reference, CNN-derived lesion volumes showed a mean difference of 0·86 mL (95% CI -5·23 to 6·94) for intraparenchymal haemorrhage, 1·83 mL (-12·01 to 15·66) for extra-axial haemorrhage, 2·09 mL (-9·38 to 13·56) for perilesional oedema, and 0·07 mL (-1·00 to 1·13) for intraventricular haemorrhage.
INTERPRETATION: We show the ability of a CNN to separately segment, quantify, and detect multiclass haemorrhagic lesions and perilesional oedema. These volumetric lesion estimates allow clinically relevant quantification of lesion burden and progression, with potential applications for personalised treatment strategies and clinical research in TBI. FUNDING: European Union 7th Framework Programme, Hannelore Kohl Stiftung, OneMind, NeuroTrauma Sciences, Integra Neurosciences, European Research Council Horizon 2020.
Copyright © 2020 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license. Published by Elsevier Ltd.. All rights reserved.

Entities:  

Year:  2020        PMID: 33328125     DOI: 10.1016/S2589-7500(20)30085-6

Source DB:  PubMed          Journal:  Lancet Digit Health        ISSN: 2589-7500


  13 in total

1.  Development and Evaluation of a Deep Learning Algorithm for Rib Segmentation and Fracture Detection from Multicenter Chest CT Images.

Authors:  Mingxiang Wu; Zhizhong Chai; Guangwu Qian; Huangjing Lin; Qiong Wang; Liansheng Wang; Hao Chen
Journal:  Radiol Artif Intell       Date:  2021-07-21

2.  Toward automatic reformation at the orbitomeatal line in head computed tomography using object detection algorithm.

Authors:  Shota Ichikawa; Hideki Itadani; Hiroyuki Sugimori
Journal:  Phys Eng Sci Med       Date:  2022-07-06

3.  Bayesian deep learning outperforms clinical trial estimators of intracerebral and intraventricular hemorrhage volume.

Authors:  Matthew F Sharrock; W Andrew Mould; Meghan Hildreth; E Paul Ryu; Nathan Walborn; Issam A Awad; Daniel F Hanley; John Muschelli
Journal:  J Neuroimaging       Date:  2022-04-17       Impact factor: 2.324

4.  Development and Validation of an Automatic System for Intracerebral Hemorrhage Medical Text Recognition and Treatment Plan Output.

Authors:  Bo Deng; Wenwen Zhu; Xiaochuan Sun; Yanfeng Xie; Wei Dan; Yan Zhan; Yulong Xia; Xinyi Liang; Jie Li; Quanhong Shi; Li Jiang
Journal:  Front Aging Neurosci       Date:  2022-04-08       Impact factor: 5.702

5.  An optimal deep learning framework for multi-type hemorrhagic lesions detection and quantification in head CT images for traumatic brain injury.

Authors:  Aniwat Phaphuangwittayakul; Yi Guo; Fangli Ying; Ahmad Yahya Dawod; Salita Angkurawaranon; Chaisiri Angkurawaranon
Journal:  Appl Intell (Dordr)       Date:  2021-09-25       Impact factor: 5.019

Review 6.  Contribution of CT-Scan Analysis by Artificial Intelligence to the Clinical Care of TBI Patients.

Authors:  Clément Brossard; Benjamin Lemasson; Arnaud Attyé; Jules-Arnaud de Busschère; Jean-François Payen; Emmanuel L Barbier; Jules Grèze; Pierre Bouzat
Journal:  Front Neurol       Date:  2021-06-10       Impact factor: 4.003

Review 7.  The Application of Deep Convolutional Neural Networks to Brain Cancer Images: A Survey.

Authors:  Amin Zadeh Shirazi; Eric Fornaciari; Mark D McDonnell; Mahdi Yaghoobi; Yesenia Cevallos; Luis Tello-Oquendo; Deysi Inca; Guillermo A Gomez
Journal:  J Pers Med       Date:  2020-11-12

8.  Prediction and Risk Assessment Models for Subarachnoid Hemorrhage: A Systematic Review on Case Studies.

Authors:  Jewel Sengupta; Robertas Alzbutas
Journal:  Biomed Res Int       Date:  2022-01-27       Impact factor: 3.411

Review 9.  Artificial Intelligence in Critical Care Medicine.

Authors:  Joo Heung Yoon; Michael R Pinsky; Gilles Clermont
Journal:  Crit Care       Date:  2022-03-22       Impact factor: 19.334

10.  Validation and Clinical Applicability of Whole-Volume Automated Segmentation of Optical Coherence Tomography in Retinal Disease Using Deep Learning.

Authors:  Marc Wilson; Reena Chopra; Megan Z Wilson; Charlotte Cooper; Patricia MacWilliams; Yun Liu; Ellery Wulczyn; Daniela Florea; Cían O Hughes; Alan Karthikesalingam; Hagar Khalid; Sandra Vermeirsch; Luke Nicholson; Pearse A Keane; Konstantinos Balaskas; Christopher J Kelly
Journal:  JAMA Ophthalmol       Date:  2021-09-01       Impact factor: 7.389

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