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基于 MRI 的放射组学预测恶性涎腺肿瘤组织学:方法学和“原理验证”。

MRI-based radiomics for predicting histology in malignant salivary gland tumors: methodology and "proof of principle".

机构信息

Department of Radiation Oncology, Zurich University Hospital, Zurich, Switzerland.

Department of Neuroradadiology, Clinical Neuroscience Center, University Hospital Zurich and University of Zurich, Zurich, Switzerland.

出版信息

Sci Rep. 2024 Apr 30;14(1):9945. doi: 10.1038/s41598-024-60200-9.

Abstract

Defining the exact histological features of salivary gland malignancies before treatment remains an unsolved problem that compromises the ability to tailor further therapeutic steps individually. Radiomics, a new methodology to extract quantitative information from medical images, could contribute to characterizing the individual cancer phenotype already before treatment in a fast and non-invasive way. Consequently, the standardization and implementation of radiomic analysis in the clinical routine work to predict histology of salivary gland cancer (SGC) could also provide improvements in clinical decision-making. In this study, we aimed to investigate the potential of radiomic features as imaging biomarker to distinguish between high grade and low-grade salivary gland malignancies. We have also investigated the effect of image and feature level harmonization on the performance of radiomic models. For this study, our dual center cohort consisted of 126 patients, with histologically proven SGC, who underwent curative-intent treatment in two tertiary oncology centers. We extracted and analyzed the radiomics features of 120 pre-therapeutic MRI images with gadolinium (T1 sequences), and correlated those with the definitive post-operative histology. In our study the best radiomic model achieved average AUC of 0.66 and balanced accuracy of 0.63. According to the results, there is significant difference between the performance of models based on MRI intensity normalized images + harmonized features and other models (p value < 0.05) which indicates that in case of dealing with heterogeneous dataset, applying the harmonization methods is beneficial. Among radiomic features minimum intensity from first order, and gray level-variance from texture category were frequently selected during multivariate analysis which indicate the potential of these features as being used as imaging biomarker. The present bicentric study presents for the first time the feasibility of implementing MR-based, handcrafted radiomics, based on T1 contrast-enhanced sequences and the ComBat harmonization method in an effort to predict the formal grading of salivary gland carcinoma with satisfactory performance.

摘要

在治疗前明确唾液腺癌的组织学特征仍然是一个未解决的问题,这会影响到个体化治疗方案的制定。放射组学是一种从医学图像中提取定量信息的新方法,它可以在治疗前快速、无创地对肿瘤的个体表型进行特征描述。因此,放射组学分析的标准化和实施在预测唾液腺癌(SGC)组织学方面也可以为临床决策提供改进。在这项研究中,我们旨在研究放射组学特征作为成像生物标志物来区分高级别和低级别唾液腺癌的潜力。我们还研究了图像和特征水平协调对放射组学模型性能的影响。在这项研究中,我们的双中心队列包括 126 名经组织学证实的 SGC 患者,这些患者在两个三级肿瘤中心接受了根治性治疗。我们从 120 例术前钆增强 MRI(T1 序列)图像中提取和分析了放射组学特征,并将其与明确的术后组织学结果相关联。在我们的研究中,最佳的放射组学模型的平均 AUC 为 0.66,平衡准确性为 0.63。根据结果,基于 MRI 强度归一化图像+协调特征的模型和其他模型的性能有显著差异(p 值<0.05),这表明在处理异质数据集时,应用协调方法是有益的。在放射组学特征中,一阶中的最小强度和纹理类别中的灰度方差在多变量分析中经常被选择,这表明这些特征作为成像生物标志物的潜在用途。这项双中心研究首次提出了基于 T1 对比增强序列和 ComBat 协调方法实施基于 MRI 的手工放射组学的可行性,以令人满意的性能预测唾液腺癌的正式分级。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/63f7/11061101/5a621fca4504/41598_2024_60200_Fig1_HTML.jpg

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