Computer-Assisted Aneurysm Growth Evaluation and Detection (AGED): Comparison with Clinical Aneurysm Follow-Up.

Aichi Chien, Žiga Špiclin, Žiga Bizjak, Kambiz Nael
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Abstract

Background and purpose: Since growing intracranial aneurysms (IA) are more likely to rupture, detecting growth is an important part of unruptured IA follow-up. Recent studies have consistently shown that detecting IA growth can be challenging, especially in smaller aneurysms. In this study, we present an automated computational method to assist detecting aneurysm growth.

Materials and methods: An analysis program, Aneurysm Growth Evaluation & Detection (AGED) based on IA images was developed. To verify the program can satisfactorily detect clinical aneurysm growth, we performed this comparative study using clinical determinations of growth during IA follow-up as a gold standard. Patients with unruptured, saccular IA followed by diagnostic brain CTA to monitor IA progression were reviewed. 48 IA image series from twenty longitudinally-followed ICA IA were analyzed using AGED. A set of IA morphologic features were calculated. Nonparametric statistical tests and ROC analysis were performed to evaluate the performance of each feature for growth detection.

Results: The set of automatically calculated morphologic features demonstrated comparable results to standard, manual clinical IA growth evaluation. Specifically, automatically calculated HMAX was superior (AUC = 0.958) at distinguishing growing and stable IA, followed by V, and SA (AUC = 0.927 and 0.917, respectively).

Conclusion: Our findings support automatic methods of detecting IA growth from sequential imaging studies as a useful adjunct to standard clinical assessment. AGED-generated growth detection shows promise for characterization and detection of IA growth and time-saving comparing with manual measurements.

Abstract Image

计算机辅助动脉瘤生长评估和检测(AGED):与临床动脉瘤随访的比较。
背景与目的:由于生长中的颅内动脉瘤(IA)更容易破裂,因此检测生长是未破裂的IA随访的重要组成部分。最近的研究一致表明,检测内腔动脉瘤的生长可能具有挑战性,特别是在较小的动脉瘤中。在这项研究中,我们提出了一种自动化的计算方法来帮助检测动脉瘤的生长。材料与方法:开发了基于IA图像的动脉瘤生长评估与检测(AGED)分析程序。为了验证该程序可以令人满意地检测临床动脉瘤生长,我们以IA随访期间的临床生长测定作为金标准进行了这项比较研究。我们回顾了未破裂的囊状内陷患者,随后进行诊断性脑CTA监测内陷进展。对20个纵向跟踪的ICA IA的48个IA图像序列进行了age分析。计算了一组IA的形态学特征。采用非参数统计检验和ROC分析来评价每个特征在生长检测中的表现。结果:一组自动计算的形态学特征显示出与标准的人工临床IA生长评估相当的结果。其中,自动计算的HMAX在区分生长IA和稳定IA时最优(AUC = 0.958),其次是V和SA (AUC分别为0.927和0.917)。结论:我们的研究结果支持从序列成像研究中自动检测IA生长的方法,作为标准临床评估的有用辅助。与人工测量相比,aged生成的生长检测显示出对IA生长的表征和检测的希望,并且节省了时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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