McCaig Institute for Bone and Joint Health and Department of Radiology, Cumming School of Medicine, University of Calgary, Calgary, AB, Canada.
Osteoporos Int. 2020 Mar;31(3):567-576. doi: 10.1007/s00198-019-05214-0. Epub 2019 Nov 29.
Manual correction of automatically generated contours for high-resolution peripheral quantitative computed tomography can be time consuming and introduces precision error. However, bias related to the automated protocol is unknown. This study provides insight into error bias that is present when using uncorrected contours and inter-operator precision error based on operator training.
High-resolution peripheral quantitative computed tomography workflow includes manually correcting contours generated by the manufacturer's automated protocol. There is interest in minimizing corrections to save time and reduce precision error; however, bias related to the automated protocol is unknown. This study quantifies error bias when contours are uncorrected and identifies the impact of operator training on bias and precision error.
Forty-five radii and tibiae scans across a representative range of bone density were analyzed using the automated and manually corrected contours of three operators, with training ranging from beginner to expert, and compared with a "ground truth" to estimate bias. Inter-operator precision was measured across operators.
The tibia had greater error bias than the radius when contours were uncorrected, with compartmental bone mineral densities and cortical microarchitecture having greatest biases, which could have significant implications for interpretation of studies using this skeletal site. Bias and precision error were greatest when contours were corrected by the beginner operator; however, when this operator was removed, bias was no longer present and inter-operator precision was between 0.01 and 3.74% for all parameters except cortical porosity.
These findings establish the need for manual correction and provide guidance on operator training needed to maximize workflow efficiency.
对于高分辨率外周定量计算机断层扫描,手动校正自动生成的轮廓可能会非常耗时,并引入精度误差。然而,自动协议相关的偏差尚不清楚。本研究深入了解了使用未经校正的轮廓和基于操作员培训的操作员间精度误差所存在的误差偏差。
高分辨率外周定量计算机断层扫描工作流程包括手动校正制造商自动协议生成的轮廓。人们有兴趣尽量减少校正以节省时间并降低精度误差;然而,自动协议相关的偏差尚不清楚。本研究量化了未校正轮廓时的误差偏差,并确定了操作员培训对偏差和精度误差的影响。
使用三位操作员的自动和手动校正轮廓分析了 45 个半径和胫骨扫描,培训范围从初学者到专家,并与“真实值”进行比较以估计偏差。在操作员之间测量了精度误差。
当轮廓未经校正时,胫骨的误差偏差大于半径,其中骨矿物质密度和皮质微结构的偏差最大,这对使用该骨骼部位的研究的解释可能有重大影响。当初学者操作员进行校正时,偏差和精度误差最大;然而,当删除该操作员时,偏差不再存在,并且除皮质孔隙率外,所有参数的操作员间精度在 0.01 到 3.74%之间。
这些发现确立了手动校正的必要性,并为最大程度地提高工作流程效率提供了关于操作员培训的指导。