Potential of Radiomics, Dosiomics, and Dose Volume Histograms for Tumor Response Prediction in Hepatocellular Carcinoma following 90Y-SIRT.

IF 2.5 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Molecular Imaging and Biology Pub Date : 2025-04-01 Epub Date: 2025-03-10 DOI:10.1007/s11307-025-01992-8
Zahra Mansouri, Yazdan Salimi, Ghasem Hajianfar, Luisa Knappe, Nicola Bianchetto Wolf, Genti Xhepa, Adrien Gleyzolle, Alexis Ricoeur, Valentina Garibotto, Ismini Mainta, Habib Zaidi
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引用次数: 0

Abstract

Purpose: We evaluate the role of radiomics, dosiomics, and dose-volume constraints (DVCs) in predicting the response of hepatocellular carcinoma to selective internal radiation therapy with 90Y with glass microspheres.

Methods: 99mTc-macroagregated albumin (99mTc-MAA) and 90Y SPECT/CT images of 17 patients were included. Tumor responses at three months were evaluated using modified response evaluation criteria in solid tumors criteria and patients were categorized as responders or non-responders. Dosimetry was conducted using the local deposition method (Dose) and biologically effective dosimetry. A total of 264 DVCs, 321 radiomic features, and 321 dosiomic features were extracted from the tumor, normal perfused liver (NPL), and whole normal liver (WNL). Five different feature selection methods in combination with eight machine learning algorithms were employed. Model performance was evaluated using area under the AUC, accuracy, sensitivity, and specificity.

Results: No statistically significant differences were observed between neither the dose metrics nor radiomicas or dosiomics features of responders and non-responder groups. 90Y-dosiomics models with any given set of inputs outperformed other models. This was also true for 90Y-radiomics from SPECT and SPECT-clinical features, achieving an AUC, accuracy, sensitivity, and specificity of 1. Among MAA-dosiomic and radiomic models, two models showed AUC ≥ 0.91. While the performance of MAA-dose volume histogram (DVH)-based models were less promising, the 90Y-DVH-based models showed strong performance (AUC ≥ 0.91) when considered independently of clinical features.

Conclusion: This study demonstrated the potential of 99mTc-MAA and 90Y SPECT-derived radiomics, dosiomics, and dosimetry metrics in establishing predictive models for tumor response.

放射组学、剂量组学和剂量体积直方图在90Y-SIRT后肝癌肿瘤反应预测中的潜力。
目的:我们评估放射组学、剂量组学和剂量-体积限制(DVCs)在预测肝癌对90Y玻璃微球选择性内放射治疗的反应中的作用。方法:收集17例患者的99mtc -巨聚集白蛋白(99mTc-MAA)和90Y SPECT/CT图像。使用实体瘤标准中修改后的反应评价标准评估肿瘤3个月时的反应,并将患者分为反应者和无反应者。剂量法采用局部沉积法(剂量法)和生物有效剂量法。从肿瘤、正常灌注肝(NPL)和全肝(WNL)共提取DVCs 264个、放射组学特征321个、剂量组学特征321个。采用了5种不同的特征选择方法和8种机器学习算法。使用AUC下面积、准确性、灵敏度和特异性来评估模型的性能。结果:反应组和非反应组的剂量指标、放射组学或剂量组学特征均无统计学差异。具有任何给定输入集的90y -剂量组学模型优于其他模型。对于来自SPECT和SPECT临床特征的90y放射组学也是如此,AUC、准确性、敏感性和特异性均为1。在maa -剂量组和放射组模型中,两个模型的AUC≥0.91。虽然基于maa剂量体积直方图(DVH)的模型的表现不太乐观,但在独立考虑临床特征时,基于90y -DVH的模型表现出很强的性能(AUC≥0.91)。结论:本研究证明了99mTc-MAA和90Y spect衍生放射组学、剂量组学和剂量学指标在建立肿瘤反应预测模型方面的潜力。
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来源期刊
CiteScore
6.90
自引率
3.20%
发文量
95
审稿时长
3 months
期刊介绍: Molecular Imaging and Biology (MIB) invites original contributions (research articles, review articles, commentaries, etc.) on the utilization of molecular imaging (i.e., nuclear imaging, optical imaging, autoradiography and pathology, MRI, MPI, ultrasound imaging, radiomics/genomics etc.) to investigate questions related to biology and health. The objective of MIB is to provide a forum to the discovery of molecular mechanisms of disease through the use of imaging techniques. We aim to investigate the biological nature of disease in patients and establish new molecular imaging diagnostic and therapy procedures. Some areas that are covered are: Preclinical and clinical imaging of macromolecular targets (e.g., genes, receptors, enzymes) involved in significant biological processes. The design, characterization, and study of new molecular imaging probes and contrast agents for the functional interrogation of macromolecular targets. Development and evaluation of imaging systems including instrumentation, image reconstruction algorithms, image analysis, and display. Development of molecular assay approaches leading to quantification of the biological information obtained in molecular imaging. Study of in vivo animal models of disease for the development of new molecular diagnostics and therapeutics. Extension of in vitro and in vivo discoveries using disease models, into well designed clinical research investigations. Clinical molecular imaging involving clinical investigations, clinical trials and medical management or cost-effectiveness studies.
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