Isikbay Masis, Caton M Travis, Narvid Jared, Talbott Jason, Cha Soonmee, Calabrese Evan
Department of Radiology and Biomedical Imaging, University of California San Francisco, 505 Parnassus Ave, M-396, San Francisco, CA 94143, USA.
Cerebrovascular Center, Department of Neurosurgery, Icahn School of Medicine at Mount Sinai, 1450 Madison Ave, New York, NY 10029, USA.
J Neuroradiol. 2025 Feb;52(1):101231. doi: 10.1016/j.neurad.2024.101231. Epub 2024 Nov 8.
Timely identification of intracranial blood products is clinically impactful, however the detection of subdural hematoma (SDH) on non-contrast CT scans of the head (NCCTH) is challenging given interference from the adjacent calvarium. This work explores the utility of a NCCTH bone removal algorithm for improving SDH detection.
A deep learning segmentation algorithm was designed/trained for bone removal using 100 NCCTH. Segmentation accuracy was evaluated on 15 NCCTH from the same institution and 22 NCCTH from an independent external dataset using quantitative overlap analysis between automated and expert manual segmentations. The impact of bone removal on detecting SDH by junior radiology trainees was evaluated with a reader study comparing detection performance between matched cases with and without bone removal applied.
Average Dice overlap between automated and manual segmentations from the internal and external test datasets were 0.9999 and 0.9957, which was superior to other publicly available methods. Among trainee readers, SDH detection was statistically improved using NCCTH with and without bone removal applied compared to standard NCCTH alone (P value <0.001). Additionally, 12/14 (86 %) of participating trainees self-reported improved detection of extra axial blood products with bone removal, and 13/14 (93 %) indicated that they would like to have access to NCCTH bone removal in the on-call setting.
Deep learning segmentation-based NCCTH bone removal is rapid, accurate, and improves detection of SDH among trainee radiologists when used in combination with standard NCCTH. This study highlights the potential of bone removal for improving confidence and accuracy of SDH detection.
及时识别颅内血液产物具有临床意义,然而,由于相邻颅骨的干扰,在头部非增强CT扫描(NCCTH)上检测硬膜下血肿(SDH)具有挑战性。本研究探讨了一种用于改善SDH检测的NCCTH去骨算法的效用。
使用100例NCCTH设计/训练了一种用于去骨的深度学习分割算法。使用自动分割与专家手动分割之间的定量重叠分析,在来自同一机构的15例NCCTH和来自独立外部数据集的22例NCCTH上评估分割准确性。通过一项读者研究评估去骨对初级放射科实习生检测SDH的影响,该研究比较了应用和未应用去骨的匹配病例之间的检测性能。
内部和外部测试数据集的自动分割与手动分割之间的平均骰子重叠率分别为0.9999和0.9957,优于其他公开可用的方法。在实习读者中,与单独使用标准NCCTH相比,应用和未应用去骨的NCCTH在SDH检测方面有统计学上的改善(P值<0.001)。此外,12/14(86%)参与的实习生自我报告称去骨后对轴外血液产物的检测有所改善,13/14(93%)表示他们希望在值班时能够使用NCCTH去骨。
基于深度学习分割的NCCTH去骨快速、准确,与标准NCCTH结合使用时可提高实习放射科医生对SDH的检测能力。本研究突出了去骨在提高SDH检测的可信度和准确性方面的潜力。