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基于单序列MRI的深度学习影像组学模型在早期股骨头坏死诊断中的应用

A single sequence MRI-based deep learning radiomics model in the diagnosis of early osteonecrosis of femoral head.

作者信息

Alkhatatbeh Tariq, Alkhatatbeh Ahmad, Li Xiaohui, Wang Wei

机构信息

Comprehensive Orthopedic Surgery Department, The Second Affiliated Hospital of Xi'an Jiaotong University, Xi'an, China.

Department of Orthopedics, The First Affiliated Hospital of Shantou University Medical College, Shantou, China.

出版信息

Front Bioeng Biotechnol. 2024 Aug 30;12:1471692. doi: 10.3389/fbioe.2024.1471692. eCollection 2024.

Abstract

PURPOSE

The objective of this study was to create and assess a Deep Learning-Based Radiomics model using a single sequence MRI that could accurately predict early Femoral Head Osteonecrosis (ONFH). This is the first time such a model was used for the diagnosis of early ONFH. Its simpler than the previously published multi-sequence MRI radiomics based method, and it implements Deep learning to improve on radiomics. It has the potential to be highly beneficial in the early stages of diagnosis and treatment planning.

METHODS

MRI scans from 150 patients in total (80 healthy, 70 necrotic) were used, and split into training and testing sets in a 7:3 ratio. Handcrafted as well as deep learning features were retrieved from Tesla 2 weighted (T2W1) MRI slices. After a rigorous selection process, these features were used to construct three models: a Radiomics-based (Rad-model), a Deep Learning-based (DL-model), and a Deep Learning-based Radiomics (DLR-model). The performance of these models in predicting early ONFH was evaluated by comparing them using the receiver operating characteristic (ROC) and decision curve analysis (DCA).

RESULTS

1,197 handcrafted radiomics and 512 DL features were extracted then processed; after the final selection: 15 features were used for the Rad-model, 12 features for the DL-model, and only 9 features were selected for the DLR-model. The most effective algorithm that was used in all of the models was Logistic regression (LR). The Rad-model depicted good results outperforming the DL-model; AUC = 0.944 (95%CI, 0.862-1.000) and AUC = 0.930 (95%CI, 0.838-1.000) respectively. The DLR-model showed superior results to both Rad-model and the DL-model; AUC = 0.968 (95%CI, 0.909-1.000); and a sensitivity of 0.95 and specificity of 0.920. The DCA showed that DLR had a greater net clinical benefit in detecting early ONFH.

CONCLUSION

Using a single sequence MRI scan, our work constructed and verified a Deep Learning-Based Radiomics Model for early ONFH diagnosis. This strategy outperformed a Deep learning technique based on Resnet18 and a model based on Radiomics. This straightforward method can offer essential diagnostic data promptly and enhance early therapy strategizing for individuals with ONFH, all while utilizing just one MRI sequence and a more standardized and objective interpretation of MRI images.

摘要

目的

本研究的目的是创建并评估一种基于深度学习的放射组学模型,该模型使用单序列磁共振成像(MRI)能够准确预测早期股骨头缺血性坏死(ONFH)。这是首次将此类模型用于早期ONFH的诊断。它比先前发表的基于多序列MRI放射组学的方法更简单,并且采用深度学习来改进放射组学。它在诊断和治疗规划的早期阶段可能具有极大的益处。

方法

总共使用了150例患者的MRI扫描数据(80例健康者,70例坏死者),并以7:3的比例分为训练集和测试集。从特斯拉2加权(T2W1)MRI切片中提取手工制作的以及深度学习特征。经过严格的筛选过程,这些特征被用于构建三个模型:基于放射组学的模型(Rad模型)、基于深度学习的模型(DL模型)和基于深度学习的放射组学模型(DLR模型)。通过使用受试者操作特征(ROC)和决策曲线分析(DCA)对这些模型预测早期ONFH的性能进行评估。

结果

提取并处理了1197个手工制作的放射组学特征和512个DL特征;最终筛选后:15个特征用于Rad模型,12个特征用于DL模型,而DLR模型仅选择了9个特征。所有模型中使用的最有效算法是逻辑回归(LR)。Rad模型表现出优于DL模型的良好结果;AUC分别为0.944(95%CI,0.862 - 1.000)和0.930(95%CI,0.838 - 1.000)。DLR模型显示出优于Rad模型和DL模型的结果;AUC = 0.968(95%CI,0.909 - 1.000);灵敏度为0.95,特异性为0.920。DCA表明DLR在检测早期ONFH方面具有更大的净临床益处。

结论

通过使用单序列MRI扫描,我们的工作构建并验证了一种用于早期ONFH诊断的基于深度学习的放射组学模型。该策略优于基于Resnet18的深度学习技术和基于放射组学的模型。这种直接的方法可以迅速提供重要的诊断数据,并加强对ONFH患者的早期治疗策略制定,同时仅使用一个MRI序列,并对MRI图像进行更标准化和客观的解读。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f63d/11392871/b060c5f683d3/fbioe-12-1471692-g001.jpg

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