Department of Neurology, The Second Affiliated Hospital of Harbin Medical University, No.148. Baojian Road, NanGangDistrict, Heilongjiang, Heilongjiang prov, China.
Department of MR Diagnosis, The Second Affiliated Hospital of Harbin Medical University, Heilongjiang, China.
BMC Neurol. 2024 Jan 23;24(1):39. doi: 10.1186/s12883-024-03533-2.
To predict the appearance of early neurological deterioration (END) among patients with isolated acute pontine infarction (API) based on magnetic resonance imaging (MRI)-derived radiomics of the infarct site.
544 patients with isolated API were recruited from two centers and divided into the training set (n = 344) and the verification set (n = 200). In total, 1702 radiomics characteristics were extracted from each patient. A support vector machine algorithm was used to construct a radiomics signature (rad-score). Subsequently, univariate and multivariate logistic regression (LR) analysis was adopted to filter clinical indicators and establish clinical models. Then, based on the LR algorithm, the rad-score and clinical indicators were integrated to construct the clinical-radiomics model, which was compared with other models.
A clinical-radiomics model was established, including the 5 indicators rad-score, age, initial systolic blood pressure, initial National Institute of Health Stroke Scale, and triglyceride. A nomogram was then made based on the model. The nomogram had good predictive accuracy, with an area under the curve (AUC) of 0.966 (95% confidence interval [CI] 0.947-0.985) and 0.920 (95% [CI] 0.873-0.967) in the training and verification sets, respectively. According to the decision curve analysis, the clinical-radiomics model showed better clinical value than the other models. In addition, the calibration curves also showed that the model has excellent consistency.
The clinical-radiomics model combined MRI-derived radiomics and clinical metrics and may serve as a scoring tool for early prediction of END among patients with isolated API.
基于磁共振成像(MRI)梗死部位的放射组学,预测孤立性急性脑桥梗死(API)患者的早期神经功能恶化(END)的发生。
从两个中心共招募了 544 名孤立性 API 患者,将其分为训练集(n=344)和验证集(n=200)。总共从每位患者提取 1702 个放射组学特征。采用支持向量机算法构建放射组学特征(rad-score)。然后,采用单变量和多变量逻辑回归(LR)分析筛选临床指标并建立临床模型。之后,基于 LR 算法,将 rad-score 和临床指标进行整合,构建临床放射组学模型,并与其他模型进行比较。
建立了一个包括 5 个指标的临床放射组学模型,包括 rad-score、年龄、初始收缩压、初始国立卫生研究院卒中量表和甘油三酯。然后根据模型制定了一个列线图。该列线图具有良好的预测准确性,在训练集和验证集中的曲线下面积(AUC)分别为 0.966(95%置信区间 [CI]:0.947-0.985)和 0.920(95%CI:0.873-0.967)。根据决策曲线分析,临床放射组学模型比其他模型具有更好的临床价值。此外,校准曲线也表明该模型具有极好的一致性。
该临床放射组学模型结合了 MRI 衍生的放射组学和临床指标,可作为预测孤立性 API 患者 END 的评分工具。