Ghankot Rithvik S, Singh Manwi, Desroches Shelby T, Jester Noemi, Mahajan Amit, Lorr Samantha, Buono Frank D, Wiznia Daniel H, Johnson Michele H, Tommasini Steven M
School of Engineering and Applied Science, Yale University, New Haven, CT, United States.
School of Medicine, University of Sheffield, Sheffield, United Kingdom.
Front Radiol. 2025 Aug 6;5:1618261. doi: 10.3389/fradi.2025.1618261. eCollection 2025.
Neurofibromatosis type 2 related Schwannomatosis (NF2-SWN) is a genetic disorder characterized by the growth of vestibular schwannomas (VS), which often leads to progressive hearing loss and vestibular dysfunction. Accurate volumetric assessment of VS tumors is crucial for effective monitoring and treatment planning. Since tumor growth dynamics are often subtle, the resolution of MRI scans plays a critical role in detecting small volumetric changes that inform clinical decisions. This study evaluates the impact of MRI voxel resolution on the accuracy of manual and AI-driven volumetric segmentation of VS in NF2-SWN patients.
Ten patients with NF2-SWN, totaling 17 tumors, underwent high-resolution MRI scans with varying voxel sizes on different MRI machines at Yale New Haven Hospital. Tumors were segmented using both manual and AI-based methods, and the effect of voxel size on segmentation precision was quantified through volume measurements, Dice similarity coefficients, and Hausdorff distances.
Results indicate that larger voxel sizes (1.2 × 0.9 × 4.0 mm) significantly reduced segmentation accuracy when compared to smaller voxel sizes (0.5 × 0.5 × 0.8 mm). In addition, AI-based segmentation outperformed manual methods, particularly at larger voxel sizes.
These findings highlight the importance of optimizing voxel resolution for accurate tumor monitoring and suggest that AI-driven segmentation may improve consistency and precision in NF2-SWN tumor surveillance.
2型神经纤维瘤病相关的施万细胞瘤病(NF2-SWN)是一种遗传性疾病,其特征是前庭神经鞘瘤(VS)生长,这通常会导致进行性听力丧失和前庭功能障碍。准确的VS肿瘤体积评估对于有效的监测和治疗计划至关重要。由于肿瘤生长动态通常很细微,MRI扫描的分辨率在检测可指导临床决策的小体积变化方面起着关键作用。本研究评估了MRI体素分辨率对NF2-SWN患者VS手动和人工智能驱动的体积分割准确性的影响。
10例NF2-SWN患者,共17个肿瘤,在耶鲁纽黑文医院不同的MRI机器上接受了具有不同体素大小的高分辨率MRI扫描。使用手动和基于人工智能的方法对肿瘤进行分割,并通过体积测量、骰子相似系数和豪斯多夫距离量化体素大小对分割精度的影响。
结果表明,与较小体素大小(0.5×0.5×0.8 mm)相比,较大体素大小(1.2×0.9×4.0 mm)显著降低了分割准确性。此外,基于人工智能的分割优于手动方法,尤其是在较大体素大小时。
这些发现强调了优化体素分辨率以进行准确肿瘤监测的重要性,并表明人工智能驱动的分割可能会提高NF2-SWN肿瘤监测的一致性和精度。