Algorithms used in medical image segmentation for 3D printing and how to understand and quantify their performance.

IF 3.2 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING 3D printing in medicine Pub Date : 2022-06-24 DOI:10.1186/s41205-022-00145-9
Magdalene Fogarasi, James C Coburn, Beth Ripley
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Abstract

Background: 3D printing (3DP) has enabled medical professionals to create patient-specific medical devices to assist in surgical planning. Anatomical models can be generated from patient scans using a wide array of software, but there are limited studies on the geometric variance that is introduced during the digital conversion of images to models. The final accuracy of the 3D printed model is a function of manufacturing hardware quality control and the variability introduced during the multiple digital steps that convert patient scans to a printable format. This study provides a brief summary of common algorithms used for segmentation and refinement. Parameters for each that can introduce geometric variability are also identified. Several metrics for measuring variability between models and validating processes are explored and assessed.

Methods: Using a clinical maxillofacial CT scan of a patient with a tumor of the mandible, four segmentation and refinement workflows were processed using four software packages. Differences in segmentation were calculated using several techniques including volumetric, surface, linear, global, and local measurements.

Results: Visual inspection of print-ready models showed distinct differences in the thickness of the medial wall of the mandible adjacent to the tumor. Volumetric intersections and heatmaps provided useful local metrics of mismatch or variance between models made by different workflows. They also allowed calculations of aggregate percentage agreement and disagreement which provided a global benchmark metric. For the relevant regions of interest (ROIs), statistically significant differences were found in the volume and surface area comparisons for the final mandible and tumor models, as well as between measurements of the nerve central path. As with all clinical use cases, statistically significant results must be weighed against the clinical significance of any deviations found.

Conclusions: Statistically significant geometric variations from differences in segmentation and refinement algorithms can be introduced into patient-specific models. No single metric was able to capture the true accuracy of the final models. However, a combination of global and local measurements provided an understanding of important geometric variations. The clinical implications of each geometric variation is different for each anatomical location and should be evaluated on a case-by-case basis by clinicians familiar with the process. Understanding the basic segmentation and refinement functions of software is essential for sites to create a baseline from which to evaluate their standard workflows, user training, and inter-user variability when using patient-specific models for clinical interventions or decisions.

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用于 3D 打印的医学图像分割算法,以及如何理解和量化其性能。
背景:三维打印(3DP)使医疗专业人员能够创建患者专用的医疗设备,以协助手术规划。解剖模型可通过多种软件从患者扫描图像中生成,但对图像到模型的数字转换过程中产生的几何差异的研究却很有限。三维打印模型的最终精确度取决于制造硬件的质量控制以及将患者扫描图像转换为可打印格式的多个数字步骤中引入的变异性。本研究简要总结了用于分割和细化的常用算法。同时还确定了每种算法中可能引入几何变异的参数。研究还探讨并评估了衡量模型间可变性和验证流程的几种指标:方法:使用一个下颌骨肿瘤患者的临床颌面部 CT 扫描,使用四个软件包处理了四个分割和细化工作流程。使用多种技术计算分割差异,包括体积测量、表面测量、线性测量、整体测量和局部测量:结果:对打印就绪模型的目测显示,肿瘤附近的下颌骨内侧壁厚度存在明显差异。体积交叉和热图提供了有用的局部指标,用于衡量不同工作流程制作的模型之间的不匹配或差异。它们还可以计算总的一致和不一致百分比,从而提供一个全球基准指标。对于相关感兴趣区(ROI),最终下颌骨模型和肿瘤模型的体积和表面积比较以及神经中心路径的测量结果之间存在显著的统计学差异。与所有临床应用案例一样,必须将具有统计学意义的结果与发现的任何偏差的临床意义进行权衡:结论:由于分割和细化算法的不同而产生的具有统计学意义的几何差异可被引入患者特定模型中。没有一种单一指标能够捕捉到最终模型的真正准确性。然而,结合全局和局部测量,可以了解重要的几何变异。每个解剖位置的几何变化对临床的影响各不相同,应由熟悉这一过程的临床医生根据具体情况进行评估。了解软件的基本分割和细化功能对医疗机构来说至关重要,这样可以建立一个基准,在使用患者特异性模型进行临床干预或决策时,可以据此评估其标准工作流程、用户培训和用户间的差异。
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