Radiomics with structural magnetic resonance imaging, surface morphometry features, neurology scales, and clinical metrics to evaluate the neurodevelopment of preschool children with corrected tetralogy of Fallot.

IF 1.5 4区 医学 Q2 PEDIATRICS
Translational pediatrics Pub Date : 2024-09-30 Epub Date: 2024-09-26 DOI:10.21037/tp-24-219
Feng Yang, Jingjing Zhong, Peng Liu, Wei Yu, Yuting Liu, Meijiao Zhu, Ming Yang, Xuming Mo
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引用次数: 0

Abstract

Background: Despite the improved survival rates of children with tetralogy of Fallot (TOF), various degrees of neurodevelopmental disorders persist. Currently, there is a lack of quantitative and objective imaging markers to assess the neurodevelopment of individuals with TOF. This study aimed to noninvasively examine potential quantitative imaging markers of TOF neurodevelopment by combining radiomics signatures and morphological features and to further clarify the relationship between imaging markers and clinical neurodevelopment metrics.

Methods: This study included 33 preschool children who had undergone surgical correction for TOF and 29 healthy controls (36 in the training cohort and 26 in the testing cohort), all of whom underwent three-dimensional T1-weighted high-resolution (T1-3D) head magnetic resonance imaging (MRI). Radiomics features were extracted by Pyradiomics to construct radiomics models, while surface morphometry (surface and volumetric) features were analyzed to build morphometry models. Merged models integrating radiomics and morphometry features were subsequently developed. The optimal discriminative radiomics signatures were identified via least absolute shrinkage and selection operator (LASSO). Machine learning classification models include support vector machine (SVM) with radial basis function (RBF) and multivariable logistic regression (MLR) models, both of which were used to evaluate the potential imaging biomarkers. Performances of models were evaluated based on their calibration and classification metrics. The area under the receiver operating characteristic curves (AUCs) of the models were evaluated using the Delong test. Neurodevelopmental assessments for children with corrected TOF were conducted with the Wechsler Preschool and Primary Scale of Intelligence-Fourth Edition (WPPSI-IV). Furthermore, the correlation of the significant discriminative indicators with clinical metrics and neurodevelopmental scales was evaluated.

Results: Twelve discriminative radiomics signatures, optimized for classification, were identified. The performance of the merged model (AUCs of 0.922 and 0.917 for the training set and test set with SVM, respectively) was superior to that of the single radiomics model (AUCs of 0.915 and 0.917 for the training set and test set with SVM, respectively) and that of the single morphometric models (AUCs of 0.803 and 0.756 for the training set and test set with SVM, respectively). The radiomics model demonstrated higher significance than did the morphometric models in training set with SVM (AUC: 0.915 vs. 0.803; P<0.001). Additionally, the significant indicators showed a correlation with clinical indicators and neurodevelopmental scales.

Conclusions: MRI-based radiomics features combined with morphometry features can provide complementary information to identify neurodevelopmental abnormalities in children with corrected TOF, which will provide potential evidence for clinical diagnosis and treatment.

利用放射组学的结构磁共振成像、表面形态测量特征、神经量表和临床指标来评估法洛氏四联症矫正学龄前儿童的神经发育情况。
背景:尽管法洛氏四联症(TOF)患儿的存活率有所提高,但仍存在不同程度的神经发育障碍。目前,尚缺乏定量、客观的成像标志物来评估 TOF 患儿的神经发育情况。本研究旨在通过结合放射组学特征和形态学特征,对TOF神经发育的潜在定量成像标志物进行无创检查,并进一步明确成像标志物与临床神经发育指标之间的关系:本研究纳入了33名接受过TOF手术矫正的学龄前儿童和29名健康对照者(36名在训练队列中,26名在测试队列中),他们都接受了三维T1加权高分辨率(T1-3D)头部磁共振成像(MRI)检查。通过 Pyradiomics 提取放射组学特征来构建放射组学模型,同时分析表面形态测量(表面和体积)特征来构建形态测量模型。随后又开发了整合放射组学和形态学特征的合并模型。通过最小绝对收缩和选择算子(LASSO)确定了最佳的辐射组学特征。机器学习分类模型包括带有径向基函数(RBF)的支持向量机(SVM)和多变量逻辑回归(MLR)模型,这两种模型都用于评估潜在的成像生物标记物。根据校准和分类指标对模型的性能进行了评估。模型的接收者操作特征曲线下面积(AUC)通过德隆检验进行评估。使用韦氏学前和小学智力量表第四版(WPPSI-IV)对矫正 TOF 儿童进行了神经发育评估。此外,还评估了重要鉴别指标与临床指标和神经发育量表的相关性:结果:确定了 12 个经过优化的辐射组学判别特征。合并模型的性能(使用 SVM 的训练集和测试集的 AUC 分别为 0.922 和 0.917)优于单一放射组学模型(使用 SVM 的训练集和测试集的 AUC 分别为 0.915 和 0.917)和单一形态计量学模型(使用 SVM 的训练集和测试集的 AUC 分别为 0.803 和 0.756)。在使用 SVM 的训练集中,放射组学模型的显著性高于形态计量学模型(AUC:AUC: 0.915 vs. 0.803; PConclusions:基于核磁共振成像的放射组学特征与形态测量特征相结合,可为识别矫正型TOF患儿的神经发育异常提供互补信息,从而为临床诊断和治疗提供潜在证据。
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来源期刊
Translational pediatrics
Translational pediatrics Medicine-Pediatrics, Perinatology and Child Health
CiteScore
4.50
自引率
5.00%
发文量
108
期刊介绍: Information not localized
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