Literature DB >> 31987014

Machine Learning Approach to Identify Stroke Within 4.5 Hours.

Hyunna Lee1, Eun-Jae Lee2, Sungwon Ham3, Han-Bin Lee2, Ji Sung Lee4, Sun U Kwon2, Jong S Kim2, Namkug Kim5,6, Dong-Wha Kang2.   

Abstract

Background and Purpose- We aimed to investigate the ability of machine learning (ML) techniques analyzing diffusion-weighted imaging (DWI) and fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging to identify patients within the recommended time window for thrombolysis. Methods- We analyzed DWI and FLAIR images of consecutive patients with acute ischemic stroke within 24 hours of clear symptom onset by applying automatic image processing approaches. These processes included infarct segmentation, DWI, and FLAIR imaging registration and image feature extraction. A total of 89 vector features from each image sequence were captured and used in the ML. Three ML models were developed to estimate stroke onset time for binary classification (≤4.5 hours): logistic regression, support vector machine, and random forest. To evaluate the performance of ML models, the sensitivity and specificity for identifying patients within 4.5 hours were compared with the sensitivity and specificity of human readings of DWI-FLAIR mismatch. Results- Data from a total of 355 patients were analyzed. DWI-FLAIR mismatch from human readings identified patients within 4.5 hours of symptom onset with 48.5% sensitivity and 91.3% specificity. ML algorithms had significantly greater sensitivities than human readers (75.8% for logistic regression, P=0.020; 72.7% for support vector machine, P=0.033; 75.8% for random forest, P=0.013) in detecting patients within 4.5 hours, but their specificities were comparable (82.6% for logistic regression, P=0.157; 82.6% for support vector machine, P=0.157; 82.6% for random forest, P=0.157). Conclusions- ML algorithms using multiple magnetic resonance imaging features were feasible even more sensitive than human readings in identifying patients with stroke within the time window for acute thrombolysis.

Entities:  

Keywords:  artificial intelligence; humans; machine learning; magnetic resonance imaging; stroke

Year:  2020        PMID: 31987014     DOI: 10.1161/STROKEAHA.119.027611

Source DB:  PubMed          Journal:  Stroke        ISSN: 0039-2499            Impact factor:   7.914


  18 in total

1.  Ability of weakly supervised learning to detect acute ischemic stroke and hemorrhagic infarction lesions with diffusion-weighted imaging.

Authors:  Chen Cao; Zhiyang Liu; Guohua Liu; Song Jin; Shuang Xia
Journal:  Quant Imaging Med Surg       Date:  2022-01

2.  Foundations of Lesion Detection Using Machine Learning in Clinical Neuroimaging.

Authors:  Manoj Mannil; Nicolin Hainc; Risto Grkovski; Sebastian Winklhofer
Journal:  Acta Neurochir Suppl       Date:  2022

Review 3.  Applications and Techniques for Fast Machine Learning in Science.

Authors:  Allison McCarn Deiana; Nhan Tran; Joshua Agar; Michaela Blott; Giuseppe Di Guglielmo; Javier Duarte; Philip Harris; Scott Hauck; Mia Liu; Mark S Neubauer; Jennifer Ngadiuba; Seda Ogrenci-Memik; Maurizio Pierini; Thea Aarrestad; Steffen Bähr; Jürgen Becker; Anne-Sophie Berthold; Richard J Bonventre; Tomás E Müller Bravo; Markus Diefenthaler; Zhen Dong; Nick Fritzsche; Amir Gholami; Ekaterina Govorkova; Dongning Guo; Kyle J Hazelwood; Christian Herwig; Babar Khan; Sehoon Kim; Thomas Klijnsma; Yaling Liu; Kin Ho Lo; Tri Nguyen; Gianantonio Pezzullo; Seyedramin Rasoulinezhad; Ryan A Rivera; Kate Scholberg; Justin Selig; Sougata Sen; Dmitri Strukov; William Tang; Savannah Thais; Kai Lukas Unger; Ricardo Vilalta; Belina von Krosigk; Shen Wang; Thomas K Warburton
Journal:  Front Big Data       Date:  2022-04-12

4.  MRI radiomic features-based machine learning approach to classify ischemic stroke onset time.

Authors:  Yi-Qun Zhang; Ao-Fei Liu; Feng-Yuan Man; Ying-Ying Zhang; Chen Li; Yun-E Liu; Ji Zhou; Ai-Ping Zhang; Yang-Dong Zhang; Jin Lv; Wei-Jian Jiang
Journal:  J Neurol       Date:  2021-07-04       Impact factor: 4.849

5.  Promises of artificial intelligence in neuroradiology: a systematic technographic review.

Authors:  Allard W Olthof; Peter M A van Ooijen; Mohammad H Rezazade Mehrizi
Journal:  Neuroradiology       Date:  2020-04-22       Impact factor: 2.804

6.  Deep Learning-Based Method to Differentiate Neuromyelitis Optica Spectrum Disorder From Multiple Sclerosis.

Authors:  Hyunjin Kim; Youngin Lee; Yong-Hwan Kim; Young-Min Lim; Ji Sung Lee; Jincheol Woo; Su-Kyeong Jang; Yeo Jin Oh; Hye Weon Kim; Eun-Jae Lee; Dong-Wha Kang; Kwang-Kuk Kim
Journal:  Front Neurol       Date:  2020-11-30       Impact factor: 4.003

Review 7.  Artificial Intelligence and Acute Stroke Imaging.

Authors:  J E Soun; D S Chow; M Nagamine; R S Takhtawala; C G Filippi; W Yu; P D Chang
Journal:  AJNR Am J Neuroradiol       Date:  2020-11-26       Impact factor: 3.825

8.  Machine Learning-Based Prediction of Brain Tissue Infarction in Patients With Acute Ischemic Stroke Treated With Theophylline as an Add-On to Thrombolytic Therapy: A Randomized Clinical Trial Subgroup Analysis.

Authors:  Boris Modrau; Anthony Winder; Niels Hjort; Martin Nygård Johansen; Grethe Andersen; Jens Fiehler; Henrik Vorum; Nils D Forkert
Journal:  Front Neurol       Date:  2021-05-21       Impact factor: 4.003

9.  Prediction of Progression to Severe Stroke in Initially Diagnosed Anterior Circulation Ischemic Cerebral Infarction.

Authors:  Lai Wei; Yidi Cao; Kangwei Zhang; Yun Xu; Xiang Zhou; Jinxi Meng; Aijun Shen; Jiong Ni; Jing Yao; Lei Shi; Qi Zhang; Peijun Wang
Journal:  Front Neurol       Date:  2021-06-18       Impact factor: 4.003

10.  Diagnosis of Acute Central Dizziness With Simple Clinical Information Using Machine Learning.

Authors:  Bum Joon Kim; Su-Kyeong Jang; Yong-Hwan Kim; Eun-Jae Lee; Jun Young Chang; Sun U Kwon; Jong S Kim; Dong-Wha Kang
Journal:  Front Neurol       Date:  2021-07-12       Impact factor: 4.003

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