Department of Medical Ultrasound, Fujian Medical University Union Hospital, 29 Xinquan road, Fuzhou, China.
Department of Radiology, Fujian Medical University Union Hospital, 29 Xinquan road, Fuzhou, China.
J Transl Med. 2024 Jul 29;22(1):690. doi: 10.1186/s12967-024-05479-y.
To provide a preoperative prediction model for lymph node metastasis in pancreatic cancer patients and provide molecular information of key radiomic features.
Two cohorts comprising 151 and 54 pancreatic cancer patients were included in the analysis. Radiomic features from the tumor region of interests were extracted by using PyRadiomics software. We used a framework that incorporated 10 machine learning algorithms and generated 77 combinations to construct radiomics-based models for lymph node metastasis prediction. Weighted gene coexpression network analysis (WGCNA) was subsequently performed to determine the relationships between gene expression levels and radiomic features. Molecular pathways enrichment analysis was performed to uncover the underlying molecular features.
Patients in the in-house cohort (mean age, 61.3 years ± 9.6 [SD]; 91 men [60%]) were separated into training (n = 105, 70%) and validation (n = 46, 30%) cohorts. A total of 1,239 features were extracted and subjected to machine learning algorithms. The 77 radiomic models showed moderate performance for predicting lymph node metastasis, and the combination of the StepGBM and Enet algorithms had the best performance in the training (AUC = 0.84, 95% CI = 0.77-0.91) and validation (AUC = 0.85, 95% CI = 0.73-0.98) cohorts. We determined that 15 features were core variables for lymph node metastasis. Proliferation-related processes may respond to the main molecular alterations underlying these features.
Machine learning-based radiomics could predict the status of lymph node metastasis in pancreatic cancer, which is associated with proliferation-related alterations.
为胰腺癌患者提供淋巴结转移的术前预测模型,并提供关键放射组学特征的分子信息。
分析纳入了 151 例和 54 例胰腺癌患者的两个队列。使用 PyRadiomics 软件从肿瘤感兴趣区域提取放射组学特征。我们使用了一种结合了 10 种机器学习算法并生成 77 种组合的框架来构建基于放射组学的淋巴结转移预测模型。随后进行加权基因共表达网络分析(WGCNA)以确定基因表达水平与放射组学特征之间的关系。进行分子途径富集分析以揭示潜在的分子特征。
内部队列(平均年龄 61.3 岁±9.6 [SD];91 名男性[60%])的患者分为训练(n=105,70%)和验证(n=46,30%)队列。共提取了 1239 个特征,并对其进行了机器学习算法分析。这 77 个放射组学模型在预测淋巴结转移方面表现出中等性能,而 StepGBM 和 Enet 算法的组合在训练(AUC=0.84,95%CI=0.77-0.91)和验证(AUC=0.85,95%CI=0.73-0.98)队列中表现最好。我们确定了 15 个特征是淋巴结转移的核心变量。增殖相关过程可能会对这些特征的主要分子改变做出反应。
基于机器学习的放射组学可以预测胰腺癌淋巴结转移的状态,这与增殖相关的改变有关。