Department of Pediatrics, Yonsei University College of Medicine, Seoul, Republic of Korea.
Department of Medical Informatics, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.
J Med Internet Res. 2024 Nov 27;26:e54641. doi: 10.2196/54641.
Growth hormone deficiency (GHD) and idiopathic short stature (ISS) are the major etiologies of short stature in children. For the diagnosis of GHD and ISS, meticulous evaluations are required, including growth hormone provocation tests, which are invasive and burdensome for children. Additionally, sella magnetic resonance imaging (MRI) is necessary for assessing etiologies of GHD, which cannot evaluate hormonal secretion. Recently, radiomics has emerged as a revolutionary technique that uses mathematical algorithms to extract various features for the quantitative analysis of medical images.
This study aimed to develop a machine learning-based model using sella MRI-based radiomics and clinical parameters to diagnose GHD and ISS.
A total of 293 children with short stature who underwent sella MRI and growth hormone provocation tests were included in the training set, and 47 children who met the same inclusion criteria were enrolled in the test set from different hospitals for this study. A total of 186 radiomic features were extracted from the pituitary glands using a semiautomatic segmentation process for both the T2-weighted and contrast-enhanced T1-weighted image. The clinical parameters included auxological data, insulin-like growth factor-I, and bone age. The extreme gradient boosting algorithm was used to train the prediction models. Internal validation was conducted using 5-fold cross-validation on the training set, and external validation was conducted on the test set. Model performance was assessed by plotting the area under the receiver operating characteristic curve. The mean absolute Shapley values were computed to quantify the impact of each parameter.
The area under the receiver operating characteristic curves (95% CIs) of the clinical, radiomics, and combined models were 0.684 (0.590-0.778), 0.691 (0.620-0.762), and 0.830 (0.741-0.919), respectively, in the external validation. Among the clinical parameters, the major contributing factors to prediction were BMI SD score (SDS), chronological age-bone age, weight SDS, growth velocity, and insulin-like growth factor-I SDS in the clinical model. In the combined model, radiomic features including maximum probability from a T2-weighted image and run length nonuniformity normalized from a T2-weighted image added incremental value to the prediction (combined model vs clinical model, P=.03; combined model vs radiomics model, P=.02). The code for our model is available in a public repository on GitHub.
Our model combining both radiomics and clinical parameters can accurately predict GHD from ISS, which was also proven in the external validation. These findings highlight the potential of machine learning-based models using radiomics and clinical parameters for diagnosing GHD and ISS.
生长激素缺乏症(GHD)和特发性身材矮小症(ISS)是儿童身材矮小的主要病因。为了诊断 GHD 和 ISS,需要进行细致的评估,包括生长激素激发试验,这对儿童来说具有侵入性和负担。此外,鞍区磁共振成像(MRI)对于评估 GHD 的病因是必要的,但无法评估激素分泌情况。最近,放射组学作为一种革命性的技术出现,它使用数学算法从医学图像中提取各种特征,用于对其进行定量分析。
本研究旨在开发一种基于机器学习的模型,该模型使用基于鞍区 MRI 的放射组学和临床参数来诊断 GHD 和 ISS。
本研究纳入了 293 名接受鞍区 MRI 和生长激素激发试验的身材矮小儿童作为训练集,其中 47 名符合相同纳入标准的儿童来自不同医院作为测试集。使用半自动分割过程从 T2 加权和对比增强 T1 加权图像中提取了 186 个放射组学特征。临床参数包括生长学数据、胰岛素样生长因子-I 和骨龄。使用极端梯度提升算法对预测模型进行训练。在训练集上采用 5 折交叉验证进行内部验证,在测试集上进行外部验证。通过绘制受试者工作特征曲线下的面积来评估模型性能。计算平均绝对 Shapley 值来量化每个参数的影响。
在外部验证中,临床、放射组学和联合模型的受试者工作特征曲线下面积(95%CI)分别为 0.684(0.590-0.778)、0.691(0.620-0.762)和 0.830(0.741-0.919)。在临床参数中,预测的主要影响因素为 BMI 标准差(SDS)、实际年龄-骨龄、体重 SDS、生长速度和胰岛素样生长因子-I SDS。在联合模型中,包括 T2 加权图像中最大概率和 T2 加权图像中运行长度非均匀性标准化在内的放射组学特征为预测提供了附加价值(联合模型与临床模型相比,P=.03;联合模型与放射组学模型相比,P=.02)。我们的模型代码可在 GitHub 上的一个公共存储库中获得。
本研究通过将放射组学和临床参数相结合,构建了一个能够准确预测 GHD 和 ISS 的模型,并且在外部验证中得到了验证。这些发现突显了基于机器学习的模型结合放射组学和临床参数用于诊断 GHD 和 ISS 的潜力。