结合深度特征的放射组学预测 123I-Ioflupane SPECT 中的帕金森病。

IF 3 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Han Jiang, Yu Du, Zhonglin Lu, Bingjie Wang, Yonghua Zhao, Ruibing Wang, Hong Zhang, Greta S P Mok
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引用次数: 0

摘要

目的:123I-Ioflupane SPECT 是诊断和评估帕金森病(PD)进展的有效工具。放射组学和深度学习(DL)可用于跟踪和分析底层图像纹理和特征,以预测帕金森病的霍恩-雅尔分期(HYS)。在本研究中,我们旨在利用 123I-Ioflupane SPECT 图像,结合影像学、放射组学和基于深度学习的特征,预测首次诊断后第 0 年和第 4 年的 HYS:在这项研究中,来自帕金森病进展标记倡议数据库的 161 名受试者接受了基线 3T MRI 和 123I-Ioflupane SPECT 检查,并在首次诊断后的第 0 年和第 4 年进行了 HYS 评估。分别使用基于 MRI 和 SPECT(SPECT-V 和 SPECT-T)的分割技术从 SPECT 图像中提取纹状体摄取的常规成像特征 (IF) 和放射学特征 (RaF)。二维 DenseNet 用于预测 PD 的 HYS,并同时生成深度特征 (DF)。应用随机森林算法建立基于 DF、RaF、IF 和组合特征的模型,分别预测第 0 年的 HYS(0 期、1 期和 2 期)和第 4 年的 HYS(0 期、1 期和≥2 期)。对各种预测模型的预测准确性和接收者操作特征(ROC)分析进行了评估:结果:在第 0 年的诊断准确性方面,DL(0.696)优于大多数模型,但 SPECT-V 中的 DF + IF(0.704)除外,根据配对 t 检验,DF + IF 明显优于 DF + IF。第 4 年,基于 MRI 方法的 DF + RaF 模型的准确率最高(0.835),明显优于 DF + IF、IF + RaF、RaF 和 IF 模型。而 DL(0.820)超过了两种基于 SPECT 方法的模型。ROC 曲线下面积(AUC)突出显示,基于 MRI 方法的 DF + RaF 模型在第 0 年时(0.854)和 SPECT-T 方法的 DF + RaF 模型在第 4 年时(0.869)分别优于 DL 模型。然后,除成像特征模型外,基于SPECT的分割方法和基于MRI的分割方法之间没有显著差异:结论:与仅使用放射组学或 DL 相比,放射组学和深度特征的结合提高了 PD HYS 的预测准确性。这表明,在首次诊断后的第 0 年和第 4 年,利用第 0 年的 123I-Ioflupane SPECT 图像,有可能进一步提高 PD HYS 预测模型的性能,从而促进 PD 患者的早期诊断和治疗。基于MRI和SPECT的纹状体放射组学分割结果在放射组学和深部特征方面没有观察到明显差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiomics incorporating deep features for predicting Parkinson's disease in 123I-Ioflupane SPECT.

Purpose: 123I-Ioflupane SPECT is an effective tool for the diagnosis and progression assessment of Parkinson's disease (PD). Radiomics and deep learning (DL) can be used to track and analyze the underlying image texture and features to predict the Hoehn-Yahr stages (HYS) of PD. In this study, we aim to predict HYS at year 0 and year 4 after the first diagnosis with combined imaging, radiomics and DL-based features using 123I-Ioflupane SPECT images at year 0.

Methods: In this study, 161 subjects from the Parkinson's Progressive Marker Initiative database underwent baseline 3T MRI and 123I-Ioflupane SPECT, with HYS assessment at years 0 and 4 after first diagnosis. Conventional imaging features (IF) and radiomic features (RaF) for striatum uptakes were extracted from SPECT images using MRI- and SPECT-based (SPECT-V and SPECT-T) segmentations respectively. A 2D DenseNet was used to predict HYS of PD, and simultaneously generate deep features (DF). The random forest algorithm was applied to develop models based on DF, RaF, IF and combined features to predict HYS (stage 0, 1 and 2) at year 0 and (stage 0, 1 and ≥ 2) at year 4, respectively. Model predictive accuracy and receiver operating characteristic (ROC) analysis were assessed for various prediction models.

Results: For the diagnostic accuracy at year 0, DL (0.696) outperformed most models, except DF + IF in SPECT-V (0.704), significantly superior based on paired t-test. For year 4, accuracy of DF + RaF model in MRI-based method is the highest (0.835), significantly better than DF + IF, IF + RaF, RaF and IF models. And DL (0.820) surpassed models in both SPECT-based methods. The area under the ROC curve (AUC) highlighted DF + RaF model (0.854) in MRI-based method at year 0 and DF + RaF model (0.869) in SPECT-T method at year 4, outperforming DL models, respectively. And then, there was no significant differences between SPECT-based and MRI-based segmentation methods except for the imaging feature models.

Conclusion: The combination of radiomic and deep features enhances the prediction accuracy of PD HYS compared to only radiomics or DL. This suggests the potential for further advancements in predictive model performance for PD HYS at year 0 and year 4 after first diagnosis using 123I-Ioflupane SPECT images at year 0, thereby facilitating early diagnosis and treatment for PD patients. No significant difference was observed in radiomics results obtained between MRI- and SPECT-based striatum segmentations for radiomic and deep features.

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来源期刊
EJNMMI Physics
EJNMMI Physics Physics and Astronomy-Radiation
CiteScore
6.70
自引率
10.00%
发文量
78
审稿时长
13 weeks
期刊介绍: EJNMMI Physics is an international platform for scientists, users and adopters of nuclear medicine with a particular interest in physics matters. As a companion journal to the European Journal of Nuclear Medicine and Molecular Imaging, this journal has a multi-disciplinary approach and welcomes original materials and studies with a focus on applied physics and mathematics as well as imaging systems engineering and prototyping in nuclear medicine. This includes physics-driven approaches or algorithms supported by physics that foster early clinical adoption of nuclear medicine imaging and therapy.
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