基于放射计量学-临床机器学习模型的预处理多参数磁共振成像,用于预测鼻咽癌患者辐射诱发的颞叶损伤。

IF 2.3 3区 医学 Q1 OTORHINOLARYNGOLOGY
Li Wang MS, Ting Qiu MS, Jiawei Zhou MS, Yinsu Zhu MD, PhD, Baozhou Sun PhD, Guanyu Yang PhD, Shengfu Huang MD, Lirong Wu MD, PhD, Xia He MD, PhD
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引用次数: 0

摘要

研究背景利用基于多参数磁共振成像的预处理放射组学数据和临床数据,建立并验证一个机器学习模型,以预测鼻咽癌(NPC)患者接受调强放射治疗(IMRT)后辐射诱导的颞叶损伤(RTLI):将230名接受IMRT治疗的鼻咽癌患者(130名有RTLI,130名没有)的数据按7:3的比例随机分为训练组(n = 161)和验证组(n = 69)。从治疗前的表观弥散系数(ADC)图、T2加权成像(T2WI)和CE-T1加权成像(CE-T1WI)中提取放射组学特征。采用T检验、矛曼秩相关和最小绝对缩小和选择算子(LASSO)算法来识别重要的放射组学特征。通过单变量和多变量分析筛选出临床特征。使用多种机器学习分类器构建了放射组学和临床模型,并开发了结合临床和放射组学特征的临床-放射组学提名图。通过绘制接收者操作特征曲线(ROC)、校准曲线和决策曲线分析(DCA)来比较和验证临床模型、放射组学模型和临床-放射组学提名图的预测性能:共提取了5064个放射组学特征,从中筛选出52个放射组学特征构建放射组学特征。基于多参数核磁共振成像的放射组学特征的AUC在训练队列中为0.980,在验证队列中为0.969,优于仅基于T2WI和CE-T1WI的放射组学特征(p 结论:基于多参数核磁共振成像的放射组学特征的AUC在训练队列中为0.980,在验证队列中为0.969,优于仅基于T2WI和CE-T1WI的放射组学特征:临床-放射组学提名图整合了临床特征和治疗前多参数磁共振成像得出的放射组学特征,对确诊的鼻咽癌患者的RTLI具有令人信服的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A pretreatment multiparametric MRI-based radiomics-clinical machine learning model for predicting radiation-induced temporal lobe injury in patients with nasopharyngeal carcinoma

A pretreatment multiparametric MRI-based radiomics-clinical machine learning model for predicting radiation-induced temporal lobe injury in patients with nasopharyngeal carcinoma

Background

To establish and validate a machine learning model using pretreatment multiparametric magnetic resonance imaging-based radiomics data with clinical data to predict radiation-induced temporal lobe injury (RTLI) in patients with nasopharyngeal carcinoma (NPC) after intensity-modulated radiotherapy (IMRT).

Methods

Data from 230 patients with NPC who received IMRT (130 with RTLI and 130 without) were randomly divided into the training (n = 161) and validation cohort (n = 69) with a ratio of 7:3. Radiomics features were extracted from pretreatment apparent diffusion coefficient (ADC) map, T2-weighted imaging (T2WI), and CE-T1-weighted imaging (CE-T1WI). T-test, spearman rank correlation, and least absolute shrinkage and selection operator (LASSO) algorithm were employed to identify significant radiomics features. Clinical features were selected with univariate and multivariate analyses. Radiomics and clinical models were constructed using multiple machine learning classifiers, and a clinical-radiomics nomogram that combined clinical with radiomics features was developed. Receiver operating characteristic (ROC) curves, calibration curves, and decision curve analysis (DCA) were drawn to compare and verify the predictive performances of the clinical model, radiomics model, and clinical-radiomics nomogram.

Results

A total of 5064 radiomics features were extracted, from which 52 radiomics features were selected to construct the radiomics signature. The AUC of the radiomics signature based on multiparametric MRI was 0.980 in the training cohort and 0.969 in the validation cohort, outperforming the radiomics signature only based on T2WI and CE-T1WI (p < 0.05), which highlighted the significance of the DWI sequence in the prediction of temporal lobe injury. The area under the curve (AUC) of the clinical model was 0.895 in the training cohort and 0.905 in the validation cohort. The nomogram, which integrated radiomics and clinical features, demonstrated an impressive AUC value of 0.984 in the validation set; however, no statistically significant difference was observed compared to the radiomics model. The calibration curve and decision curve analysis of the nomogram demonstrated excellent predictive performance and clinical feasibility.

Conclusions

The clinical-radiomics nomogram, integrating clinical features with radiomics features derived from pretreatment multiparametric MRI, exhibits compelling predictive performance for RTLI in patients diagnosed with NPC.

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来源期刊
CiteScore
7.00
自引率
6.90%
发文量
278
审稿时长
1.6 months
期刊介绍: Head & Neck is an international multidisciplinary publication of original contributions concerning the diagnosis and management of diseases of the head and neck. This area involves the overlapping interests and expertise of several surgical and medical specialties, including general surgery, neurosurgery, otolaryngology, plastic surgery, oral surgery, dermatology, ophthalmology, pathology, radiotherapy, medical oncology, and the corresponding basic sciences.
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