Automating radiological measurements of the hip in children with cerebral palsy.

IF 4.9 1区 医学 Q1 ORTHOPEDICS
Peter Thompson, Mohammed Khattak, P J Joseph, Daniel C Perry, Timothy F Cootes, Claudia Lindner, Dileep Karthikappallil, Hesham Zaman, Grace Airey, Saad Maqsood, Tom Hughes, Shuja Ahmad, James McEvoy, Graeme Wilson, Ha P Do Le, Fatima Tariq, Sohan Shah, Dhawal Patel, Ross McAllister, Anil Singh Dhadwal, Joseph Fennelly, William Lloyd, Amir Varasteh, Kieran Almond, Henry Crouch-Smith
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Abstract

Aims: The aims of this study were to develop an automatic system capable of calculating four radiological measurements used in the diagnosis and monitoring of cerebral palsy (CP)-related hip disease, and to demonstrate that these measurements are sufficiently accurate to be used in clinical practice.

Methods: We developed a machine-learning system to automatically measure Reimer's migration percentage (RMP), acetabular index (ACI), head shaft angle (HSA), and neck shaft angle (NSA). The system automatically locates points around the femoral head and acetabulum on pelvic radiographs, and uses these to calculate measurements. The system was evaluated on 1,650 pelvic radiographs of children with CP (682 females and 968 males, mean age 8.3 years (SD 4.5)). Each radiograph was manually measured by five clinical experts. Agreement between the manual clinical measurements and the automatic system was assessed by mean absolute deviation (MAD) from the mean manual measurement, type 1 and type 2 intraclass correlation coefficients (ICCs), and a linear mixed-effects model (LMM) for assessing bias.

Results: The MAD scores were 5.7% (SD 8.5%) for RMP, 4.3° (SD 5.4°) for ACI, 5.0° (SD 5.2°) for NSA, and 5.7° (SD 6.1°) for HSA. Overall ICCs quantifying the agreement between the mean manual measurement and the automatic results were 0.91 for RMP, 0.66 for ACI, 0.85 for NSA, and 0.73 for HSA. The LMM showed no statistically significant bias.

Conclusion: The results showed excellent agreement between the manual and automatic measurements for RMP, good agreement for NSA, and moderate agreement for HSA and ACI. The performance of the system is sufficient for application in clinical practice to support the assessment of hip migration based on RMP. The system has the potential to save clinicians time and to improve patient care by enabling more comprehensive, consistent, and reliable monitoring of hip migration in children with CP.

脑瘫儿童髋部自动放射测量。
目的:本研究的目的是开发一种能够计算用于脑瘫(CP)相关髋关节疾病诊断和监测的四种放射测量的自动系统,并证明这些测量足够准确,可用于临床实践。方法:我们开发了一个机器学习系统来自动测量Reimer’s migration percentage (RMP)、acetabular index (ACI)、head shaft angle (HSA)、neck shaft angle (NSA)。该系统自动定位骨盆x线片上股骨头和髋臼周围的点,并使用这些点来计算测量值。该系统通过1650张小儿盆腔x线片进行评估,其中女性682例,男性968例,平均年龄8.3岁(SD 4.5)。每张x光片由5名临床专家手工测量。通过平均绝对偏差(MAD)、1型和2型类内相关系数(ICCs)和评估偏倚的线性混合效应模型(LMM)来评估人工临床测量与自动系统之间的一致性。结果:RMP的MAD评分为5.7% (SD 8.5%), ACI为4.3°(SD 5.4°),NSA为5.0°(SD 5.2°),HSA为5.7°(SD 6.1°)。RMP、ACI、NSA和HSA的总体ICCs分别为0.91、0.66、0.85和0.73。LMM没有统计学上显著的偏倚。结论:人工测量RMP和自动测量RMP的结果吻合良好,测定NSA的结果吻合良好,测定HSA和ACI的结果吻合适中。该系统的性能足以应用于临床实践,支持基于RMP的髋关节移位评估。该系统有可能节省临床医生的时间,并通过对CP患儿髋关节移位进行更全面、一致和可靠的监测来改善患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Bone & Joint Journal
Bone & Joint Journal ORTHOPEDICS-SURGERY
CiteScore
9.40
自引率
10.90%
发文量
318
期刊介绍: We welcome original articles from any part of the world. The papers are assessed by members of the Editorial Board and our international panel of expert reviewers, then either accepted for publication or rejected by the Editor. We receive over 2000 submissions each year and accept about 250 for publication, many after revisions recommended by the reviewers, editors or statistical advisers. A decision usually takes between six and eight weeks. Each paper is assessed by two reviewers with a special interest in the subject covered by the paper, and also by members of the editorial team. Controversial papers will be discussed at a full meeting of the Editorial Board. Publication is between four and six months after acceptance.
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