Institute of Biomedical Engineering, University of Oxford, Old Road Campus Research Building, Oxford, OX3 7DQ, England.
The Churchill Hospital, Oxford University Hospitals NHS Trust, Old Road, Headington, OX3 7LE, England.
Int J Comput Assist Radiol Surg. 2017 Apr;12(4):529-538. doi: 10.1007/s11548-016-1511-3. Epub 2016 Dec 27.
The aim of this study is to assess the performance of a computer-aided semi-automated algorithm we have adapted for the purpose of segmenting malignant pleural mesothelioma (MPM) on CT.
Forty-five CT scans were collected from 15 patients (M:F [Formula: see text] 10:5, mean age 62.8 years) in a multi-centre clinical drug trial. A computer-aided random walk-based algorithm was applied to segment the tumour; the results were then compared to radiologist-drawn contours and correlated with measurements made using the MPM-adapted Response Evaluation Criteria in Solid Tumour (modified RECIST).
A mean accuracy (Sørensen-Dice index) of 0.825 (95% CI [0.758, 0.892]) was achieved. Compared to a median measurement time of 68.1 min (range [40.2, 102.4]) for manual delineation, the median running time of our algorithm was 23.1 min (range [10.9, 37.0]). A linear correlation (Pearson's correlation coefficient: 0.6392, [Formula: see text]) was established between the changes in modified RECIST and computed tumour volume.
Volumetric tumour segmentation offers a potential solution to the challenges in quantifying MPM. Computer-assisted methods such as the one presented in this study facilitate this in an accurate and time-efficient manner and provide additional morphological information about the tumour's evolution over time.
本研究旨在评估我们为分割计算机辅助半自动算法的性能,该算法适用于 CT 上的恶性胸膜间皮瘤(MPM)分割。
从 15 名患者(M:F [公式:见文本] 10:5,平均年龄 62.8 岁)的 45 次 CT 扫描中收集数据。应用基于计算机辅助随机游走的算法来分割肿瘤;然后将结果与放射科医生绘制的轮廓进行比较,并与使用 MPM 适应性实体瘤反应评估标准(修改后的 RECIST)进行的测量相关联。
平均准确性(Sørensen-Dice 指数)为 0.825(95%CI [0.758, 0.892])。与手动描绘的中位数测量时间 68.1 分钟(范围 [40.2, 102.4])相比,我们算法的中位数运行时间为 23.1 分钟(范围 [10.9, 37.0])。修改后的 RECIST 和计算肿瘤体积之间建立了线性相关性(Pearson 相关系数:0.6392,[公式:见文本])。
肿瘤体积分割为量化 MPM 提供了一种潜在的解决方案。本文提出的计算机辅助方法以准确和高效的方式促进了这一点,并提供了有关肿瘤随时间演变的额外形态学信息。