首页|期刊导航|南方医科大学学报|基于多约束潜在表征学习的双向特征映射分类模型:肺炎鉴别诊断

基于多约束潜在表征学习的双向特征映射分类模型:肺炎鉴别诊断OA

A bidirectional feature mapping classification model based on multi-constrained latent representation learning for differential diagnosis of pneumonia

中文摘要英文摘要

目的 构建一种基于多约束潜在表征学习的双向特征映射肺炎鉴别分类模型,并验证其判别性能、可解释性及临床可行性.方法 收集了2913名患者(1457名阳性和1456名阴性)的胸部X线(CXR)图像,并使用开源影像组学工具PyRadiomics从掩码中提取影像组学特征.使用本研究提出的基于多约束潜在表征学习的双向特征映射分类模型,将CXR的影像组学特征映射到潜在共享空间并建立分类模型.采用五折交叉验证方法和阳性预测值(PPV)、阴性预测值(NPV)、特异性(SPE)、灵敏度(SEN)、准确率(ACC)、ROC曲线下面积(AUC)评价该分类模型的鉴别性能.将本研究所提出的模型与其他特征分类模型对于肺炎的鉴别能力进行定量比较.决策曲线分析(DCA)和消融实验评估各约束模块的贡献.采用 SHAP 方法对影像组学特征的重要性进行解释,以提升模型的可解释性.本研究提出特征映射方法得到的低维潜在特征进行样本散点可视化实验,验证本研究所提出的特征映射分类模型的可行性和有效性.结果 五折交叉验证结果显示本研究所提出的基于多约束表征学习的双向特征映射分类模型在鉴别肺炎中的PPV、NPV、SPE、SEN、ACC、AUC分别为0.796、0.830、0.784、0.838、0.811、0.893,决策曲线显示在临床可接受阈值内具有更高净受益,消融实验验证多约束模块的关键作用,SHAP 分析表明模型关注的特征具有医学合理性,且特征映射方法在可视化实验中具有优秀的表现.结论 基于多约束潜在表征学习的双向特征映射分类模型在鉴别肺炎中的应用具有较强的鉴别能力和较高的应用价值.与其他分类模型相比,本研究提出的分类模型在肺炎的鉴别分类任务中具有较大的优势.

Objective To develop a bidirectional feature-mapping classification model for differential diagnosis of pneumonia.Methods We collected chest X-ray(CXR)images from 1457 patients with pneumonia and 1456 healthy individuals.Radiomic features extracted from the segmentation masks using PyRadiomics were mapped into a latent shared space to construct the classification model using the bidirectional feature mapping classification model based on multi-constrained latent representation learning.The performance of the constructed model for differential diagnosis of pneumonia was evaluated using 5-fold cross-validation and compared with other feature-based classification models.Decision curve analysis was used for evaluating clinical utility of the model,and ablation experiments were performed to assess the contribution of each constraint module.The importance of the radiomics features was interpreted using the SHAP method,and a two-dimensional visualization experiment of the low-dimensional latent features obtained through the proposed mapping method was conducted to verify the feasibility and effectiveness of the model.Results The 5-fold cross-validation results showed that the proposed classification model had a positive predictive value of 0.796,a negative predictive value of 0.830,a specificity of 0.784,a sensitivity of 0.830,an accuracy of 0.811,and an area under the ROC curve of 0.893 for differential diagnosis of pneumonia.Decision curve analysis demonstrated a high net clinical benefit of the model within acceptable threshold probabilities.Ablation studies confirmed the essential role of the multi-constraint module,and the SHAP analysis revealed that the model focused primarily on clinically meaningful and medically interpretable features.The feature mapping method exhibited excellent performance in visual experiments to confirm the effectiveness of the proposed model.Conclusion The proposed bidirectional feature mapping classification model demonstrates strong discriminative capability and high potential for differential diagnosis of pneumonia and shows obvious advantages over other classification models in pneumonia classification tasks.

曾敏;卓俐;谭顺谦;甄鑫

南方医科大学生物医学工程学院,广东 广州 510515南方医科大学生物医学工程学院,广东 广州 510515南方医科大学生物医学工程学院,广东 广州 510515南方医科大学生物医学工程学院,广东 广州 510515

影像组学特征映射表征学习判别分析肺炎

radiomicsfeature mappingrepresentation learningdiscriminant analysispneumonia

《南方医科大学学报》 2026 (6)

1434-1443,10

国家自然科学基金(82572381)广东省自然科学基金(2024A1515012100) Supported by National Natural Science Foundation of China(82572381).

10.12122/j.issn.1673-4254.2026.06.23

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