Automated detection and analysis of subdural hematomas using a machine learning algorithm

被引:9
|
作者
Colasurdo, Marco [1 ]
Leibushor, Nir [2 ]
Robledo, Ariadna [3 ]
Vasandani, Viren [3 ]
Luna, Zean Aaron [3 ]
Rao, Abhijit S. [3 ]
Garcia, Roberto [3 ]
Srinivasan, Visish M. [4 ]
Sheth, Sunil A. [5 ]
Avni, Naama [2 ]
Madziva, Moleen [2 ]
Berejick, Mor [2 ]
Sirota, Goni [2 ]
Efrati, Aielet [2 ]
Meisel, Avraham [2 ]
Shaltoni, Hashem
Kan, Peter [3 ,6 ]
机构
[1] Univ Texas Med Branch, Dept Radiol, Div Neuroradiol, Galveston, TX USA
[2] Viz Ai Inc, San Francisco, CA USA
[3] Univ Texas Med Branch, Dept Neurol, Galveston, TX USA
[4] St Josephs Hosp, Barrow Neurol Inst, Dept Neurosurg, Phoenix, AZ USA
[5] Univ Texas Hlth Sci Ctr, McGovern Med Sch, Dept Neurol, Houston, TX USA
[6] Univ Texas Med Branch, Galveston, TX 77555 USA
关键词
subdural; hemorrhage; trauma; technology; CT; AI; artificial intelligence; ARTIFICIAL-INTELLIGENCE; EPIDEMIOLOGY; MANAGEMENT; DIAGNOSIS;
D O I
10.3171/2022.8.JNS22888
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
OBJECTIVE Machine learning algorithms have shown groundbreaking results in neuroimaging. Herein, the authors evaluate the performance of a newly developed convolutional neural network (CNN) to detect and quantify the thickness, volume, and midline shift (MLS) of subdural hematoma (SDH) from noncontrast head CT (NCHCT).METHODS NCHCT studies performed for the evaluation of head trauma in consecutive patients between July 2018 and April 2021 at a single institution were retrospectively identified. Ground truth determination of SDH, thickness, and MLS was established by the neuroradiology report. The primary outcome was performance of the CNN in detecting SDH in an external validation set, as measured using area under the receiver operating characteristic curve analysis. Secondary outcomes included accuracy for thickness, volume, and MLS.RESULTS Among 263 cases with valid NCHCT according to the study criteria, 135 patients (51%) were male, the mean (+/- standard deviation) age was 61 +/- 23 years, and 70 patients were diagnosed with SDH on neuroradiologist evaluation. The median SDH thickness was 11 mm (IQR 6 mm), and 16 patients had a median MLS of 5 mm (IQR 2.25 mm). In the in-dependent data set, the CNN performed well, with sensitivity of 91.4% (95% CI 82.3%-96.8%), specificity of 96.4% (95% CI 92.7%-98.5%), and accuracy of 95.1% (95% CI 91.7%-97.3%); sensitivity for the subgroup with an SDH thickness above 10 mm was 100%. The maximum thickness mean absolute error was 2.75 mm (95% CI 2.14-3.37 mm), whereas the MLS mean absolute error was 0.93 mm (95% CI 0.55-1.31 mm). The Pearson correlation coefficient computed to determine agreement between automated and manual segmentation measurements was 0.97 (95% CI 0.96-0.98).CONCLUSIONS The described Viz.ai SDH CNN performed exceptionally well at identifying and quantifying key fea-tures of SDHs in an independent validation imaging data set.
引用
收藏
页码:1077 / 1084
页数:8
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