Colasurdo Marco, Amran Dor, Chen Huanwen, Ziv Keren, Geron Michal, Love Christopher J, Robledo Ariadna, O'Leary Sean, Husain Adam, Von Waaden Nicholas, Garcia Roberto, Edhayan Gautam, Shaltoni Hashem, Memon Muhammad Zeeshan, Kan Peter
Department of Interventional Radiology, Oregon Health and Science University, Portland , Oregon , USA.
Viz.ai Inc., San Francisco , California , USA.
Neurosurgery. 2025 Apr 14. doi: 10.1227/neu.0000000000003455.
Noncontrast head computed tomography is the mainstay imaging modality to guide the management of intracranial hemorrhage (ICH); however, manual measurements can be time-consuming. In our study, we evaluate the performance of an artificial intelligence (AI) machine learning algorithm, Viz ICH-Plus, to automatically quantify ICH and bilateral lateral ventricular (BLV) volumes as well as midline shift (MLS).
ICH patients considered for external ventricular drain with an initial noncontrast head computed tomography, and at least 1 follow-up scan within 48 hours was identified from a single center. Viz ICH-Plus estimations of ICH volume, BLV volume, and MLS were generated for each scan and compared with manually contoured and measured values. Median absolute errors and the ability of Viz ICH-Plus to detect clinically meaningful change from initial to follow-up scans (ICH volume growth ≥10 mL, BLV volume change ≥10 mL, or MLS increase ≥4 mm) were assessed.
Thirty patients were included for a total of 78 scans. The median absolute error was 2.9 mL (IQR 1.2 to 5.8) for ICH, 5.3 mL (IQR 2.5 to 7.9) for BLV volume, and 1.1 mm (IQR 0.7 to 2.0) for MLS. The ability of Viz ICH-Plus to detect a clinically significant change between scans was robust with sensitivity, specificity, positive predictive value, negative predictive value, and overall accuracy of 91.7%, 92.6%, 84.6%, 96.2%, and 92.3%, respectively.
The described Viz ICH-Plus algorithm performed moderately well at quantifying ICH, BLV volume, and MLS with satisfying spatial overlap of artificial intelligence and manual segmentations. The system demonstrated good predictive power when using predetermined thresholds to estimate clinically significant changes.
非增强头部计算机断层扫描是指导颅内出血(ICH)治疗的主要成像方式;然而,手动测量可能耗时。在我们的研究中,我们评估了一种人工智能(AI)机器学习算法Viz ICH-Plus自动量化ICH、双侧侧脑室(BLV)容积以及中线移位(MLS)的性能。
从一个单一中心识别出考虑进行脑室外引流且初始有非增强头部计算机断层扫描,以及在48小时内至少有1次随访扫描的ICH患者。对每次扫描生成Viz ICH-Plus对ICH容积、BLV容积和MLS的估计值,并与手动勾勒和测量的值进行比较。评估了中位绝对误差以及Viz ICH-Plus从初始扫描到随访扫描检测临床有意义变化(ICH容积增长≥10 mL、BLV容积变化≥10 mL或MLS增加≥4 mm)的能力。
纳入30例患者,共进行了78次扫描。ICH的中位绝对误差为2.9 mL(四分位间距1.2至5.8),BLV容积为5.3 mL(四分位间距2.5至7.9),MLS为1.1 mm(四分位间距0.7至2.0)。Viz ICH-Plus检测扫描间临床显著变化的能力很强,敏感性、特异性、阳性预测值、阴性预测值和总体准确率分别为91.7%、92.6%、84.6%、96.2%和92.3%。
所描述的Viz ICH-Plus算法在量化ICH、BLV容积和MLS方面表现中等良好,人工智能和手动分割的空间重叠令人满意。当使用预定阈值估计临床显著变化时,该系统显示出良好的预测能力。