Prediction of femoral head collapse in osteonecrosis using deep learning segmentation and radiomics texture analysis of MRI.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Shihua Gao, Haoran Zhu, Moshan Wen, Wei He, Yufeng Wu, Ziqi Li, Jiewei Peng
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Abstract

Background: Femoral head collapse is a critical pathological change and is regarded as turning point in disease progression in osteonecrosis of the femoral head (ONFH). In this study, we aim to build an automatic femoral head collapse prediction pipeline for ONFH based on magnetic resonance imaging (MRI) radiomics.

Methods: In the segmentation model development dataset, T1-weighted MRI of 222 hips from two hospitals were retrospectively collected and randomly split into training (n = 190) and test (n = 32) sets. In the prognosis prediction model development dataset, 206 hips were also retrospectively collected from two hospitals and divided into training set (n = 155) and external test set (n = 51) according to data source. A deep learning model for automatic lesion segmentation was trained with nnU-Net, from which three-dimensional regions of interest were segmented and a total of 107 radiomics features were extracted. After intra-class correlation coefficients screening, feature correlation coefficient screening and Least Absolute Shrinkage and Selection Operator regression feature selection, a machine learning model for ONFH prognosis prediction was trained with Logistic Regression (LR) and Light Gradient Boosting Machine (LightGBM) algorithm.

Results: The segmentation model achieved an average dice similarity coefficient of 0.848 and an average 95% Hausdorff distance of 3.794 in the test set, compared to the manual segmentation results. After feature selection, nine radiomics features were included in the prognosis prediction model. External test showed that the LightGBM model exhibited acceptable predictive performance. The area under the curve (AUC) of the prediction model was 0.851 (95% CI: 0.7268-0.9752), with an accuracy of 0.765, sensitivity of 0.833, and specificity of 0.727. Decision curve analysis showed that the LightGBM model exhibited favorable clinical utility.

Conclusion: This study presents an automated pipeline for predicting femoral head collapse in ONFH with acceptable performance. Further research is necessary to determine the clinical applicability of this radiomics-based approach and to assess its potential to assist in treatment decision-making for ONFH.

利用核磁共振成像的深度学习分割和放射组学纹理分析预测骨坏死中的股骨头塌陷。
背景:股骨头塌陷是股骨头坏死(ONFH)的一个关键病理变化,被认为是疾病进展的转折点。本研究旨在基于磁共振成像(MRI)放射组学建立股骨头坏死的股骨头塌陷自动预测管道:在分割模型开发数据集中,我们回顾性地收集了两家医院 222 个髋关节的 T1 加权 MRI,并随机分成训练集(n = 190)和测试集(n = 32)。在预后预测模型开发数据集中,也从两家医院回顾性收集了206个髋关节,并根据数据来源分为训练集(n = 155)和外部测试集(n = 51)。利用 nnU-Net 训练了一个用于自动病灶分割的深度学习模型,从中分割出三维感兴趣区,并提取了共 107 个放射组学特征。经过类内相关系数筛选、特征相关系数筛选和最小绝对收缩与选择算子回归特征选择后,利用逻辑回归(LR)和光梯度提升机(LightGBM)算法训练了ONFH预后预测的机器学习模型:与人工分割结果相比,该分割模型在测试集中的平均骰子相似系数为0.848,平均95% Hausdorff距离为3.794。经过特征选择,九个放射组学特征被纳入预后预测模型。外部测试表明,LightGBM 模型的预测性能可以接受。预测模型的曲线下面积(AUC)为 0.851(95% CI:0.7268-0.9752),准确率为 0.765,灵敏度为 0.833,特异性为 0.727。决策曲线分析表明,LightGBM 模型具有良好的临床实用性:本研究提出了一种预测 ONFH 股骨头塌陷的自动化管道,其性能可以接受。有必要开展进一步研究,以确定这种基于放射组学的方法的临床适用性,并评估其在辅助ONFH治疗决策方面的潜力。
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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CiteScore
7.20
自引率
4.30%
发文量
567
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