Evaluation of Diffusion Lesion Volume Measurements in Acute Ischemic Stroke Using Encoder-Decoder Convolutional Network

被引:51
作者
Kim, Yoon-Chul [1 ]
Lee, Ji-Eun [2 ]
Yu, Inwu [2 ]
Song, Ha-Na [2 ]
Baek, In-Young [2 ]
Seong, Joon-Kyung [3 ]
Jeong, Han-Gil [4 ,5 ]
Kim, Beom Joon [4 ,5 ]
Nam, Hyo Suk [6 ]
Chung, Jong-Won [2 ]
Bang, Oh Young [2 ]
Kim, Gyeong-Moon [2 ]
Seo, Woo-Keun [2 ,7 ]
机构
[1] Sungkyunkwan Univ, Sch Med, Samsung Med Ctr, Clin Res Inst, Seoul, South Korea
[2] Sungkyunkwan Univ, Sch Med, Samsung Med Ctr, Dept Neurol, Seoul, South Korea
[3] Korea Univ, Dept Biomed Engn, Seoul, South Korea
[4] Seoul Natl Univ, Bundang Hosp, Dept Neurol, Seong Nam, South Korea
[5] Seoul Natl Univ, Bundang Hosp, Ctr Cardiovasc, Seong Nam, South Korea
[6] Yonsei Univ, Dept Neurol, Seoul, South Korea
[7] Sungkyunkwan Univ, Dept Digital Hlth, SAIHST, Seoul, South Korea
基金
新加坡国家研究基金会;
关键词
cerebral infarction; deep learning; diffusion; ischemia; neurologist; THROMBOLYSIS; TIME; SEGMENTATION; THROMBECTOMY; RISK;
D O I
10.1161/STROKEAHA.118.024261
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background and Purpose Automatic segmentation of cerebral infarction on diffusion-weighted imaging (DWI) is typically performed based on a fixed apparent diffusion coefficient (ADC) threshold. Fixed ADC threshold methods may not be accurate because ADC values vary over time after stroke onset. Deep learning has the potential to improve the accuracy, provided that a large set of correctly annotated lesion data is used for training. The purpose of this study was to evaluate deep learning-based methods and compare them with commercial software in terms of lesion volume measurements. Methods U-net, an encoder-decoder convolutional neural network, was adopted to train segmentation models. Two U-net models were developed: a U-net (DWI+ADC) model, trained on DWI and ADC data, and a U-net (DWI) model, trained on DWI data only. A total of 296 subjects were used for training and 134 for external validation. An expert neurologist manually delineated the stroke lesions on DWI images, which were used as the ground-truth reference. Lesion volume measurements from the U-net methods were compared against the expert's manual segmentation and Rapid Processing of Perfusion and Diffusion (RAPID; iSchemaView Inc) analysis. Results In external validation, U-net (DWI+ADC) showed the highest intraclass correlation coefficient with manual segmentation (intraclass correlation coefficient, 1.0; 95% CI, 0.99-1.00) and sufficiently high correlation with the RAPID results (intraclass correlation coefficient, 0.99; 95% CI, 0.98-0.99). U-net (DWI+ADC) and manual segmentation resulted in the smallest 95% Bland-Altman limits of agreement (-5.31 to 4.93 mL) with a mean difference of -0.19 mL. Conclusions The presented deep learning-based method is fully automatic and shows a high correlation of diffusion lesion volume measurements with manual segmentation and commercial software. The method has the potential to be used in patient selection for endovascular reperfusion therapy in the late time window of acute stroke.
引用
收藏
页码:1444 / 1451
页数:8
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