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基于多参数磁共振成像和超声视频的机器学习模型在预测前列腺癌方面的比较。

Comparison of machine learning models based on multi-parametric magnetic resonance imaging and ultrasound videos for the prediction of prostate cancer.

作者信息

Qi Xiaoyang, Wang Kai, Feng Bojian, Sun Xingbo, Yang Jie, Hu Zhengbiao, Zhang Maoliang, Lv Cheng, Jin Liyuan, Zhou Lingyan, Wang Zhengping, Yao Jincao

机构信息

Department of Ultrasound, The Affiliated Dongyang Hospital of Wenzhou Medical University, Dongyang, Zhejiang, China.

Department of Ultrasound, The Cancer Hospital of the University of Chinese Academy of Sciences (Zhejiang Cancer Hospital), Hangzhou, Zhejiang, China.

出版信息

Front Oncol. 2023 May 16;13:1157949. doi: 10.3389/fonc.2023.1157949. eCollection 2023.

Abstract

OBJECTIVE

To establish machine learning (ML) prediction models for prostate cancer (PCa) using transrectal ultrasound videos and multi-parametric magnetic resonance imaging (mpMRI) and compare their diagnostic performance.

MATERIALS AND METHODS

We systematically collated the data of 383 patients, including 187 with PCa and 196 with benign lesions. Of them, 307 patients (150 with PCa and 157 with benign lesions) were randomly selected to train and validate the ML models, 76 patients were used as test set. B-Ultrasound videos (BUS), mpMRI T2 sequence (T2), and ADC sequence (ADC) were obtained from all patients. We extracted 851 features of each patient in the BUS, T2, and ADC groups and used a t-test, the Mann-Whitney U test, and LASSO regression to screen the features. Support vector machine (SVM), random forest (RF), adaptive boosting (ADB), and gradient boosting machine (GBM) models were used to establish radiomics models. In addition, we fused the features screened LASSO regression from three groups as new features and rebuilt ML models. The performance of the ML models in diagnosing PCa in the BUS, T2, ADC, and fusion groups was compared using the area under the ROC curve (AUC), sensitivity, specificity, and accuracy.

RESULTS

In the test cohort, the AUC of each model in the ADC group was higher than that of in the.BUS and T2 groups. Among the models, the RF model had the best diagnostic performance, with an AUC of 0.85, sensitivity of 0.78 (0.61-0.89), specificity of 0.84 (0.69-0.94), and accuracy of 0.83 (0.66-0.93). The SVM model in both the BUS and T2 groups performed best. Based on the features screened in the BUS, T2, and ADC groups fused to construct the models, the SVM model was found to perform best, with an AUC of 0.87, sensitivity of 0.73 (0.56-0.86), specificity of 0.79 (0.63-0.90), and accuracy of 0.77 (0.59-0.89). The difference in the results was statistically significant (<0.05).

CONCLUSION

The ML prediction models had a good diagnostic ability for PCa. Among them, the SVM model in the fusion group showed the best performance in diagnosing PCa. These prediction models can help radiologists make better diagnoses.

摘要

目的

利用经直肠超声视频和多参数磁共振成像(mpMRI)建立前列腺癌(PCa)的机器学习(ML)预测模型,并比较其诊断性能。

材料与方法

我们系统整理了383例患者的数据,其中187例为PCa患者,196例为良性病变患者。其中,随机选取307例患者(150例PCa患者和157例良性病变患者)训练和验证ML模型,76例患者作为测试集。所有患者均获取了B超视频(BUS)、mpMRI T2序列(T2)和ADC序列(ADC)。我们提取了BUS、T2和ADC组中每位患者的851个特征,并使用t检验、曼-惠特尼U检验和LASSO回归筛选特征。使用支持向量机(SVM)、随机森林(RF)、自适应增强(ADB)和梯度增强机(GBM)模型建立放射组学模型。此外,我们将通过LASSO回归从三组中筛选出的特征融合作为新特征,并重建ML模型。使用ROC曲线下面积(AUC)、敏感性、特异性和准确性比较ML模型在BUS、T2、ADC和融合组中诊断PCa的性能。

结果

在测试队列中,ADC组中各模型的AUC均高于BUS组和T2组。其中,RF模型诊断性能最佳,AUC为0.85,敏感性为0.78(0.61 - 0.89),特异性为0.84(0.69 - 0.94),准确性为0.83(0.66 - 0.93)。BUS组和T2组中的SVM模型表现最佳。基于融合BUS、T2和ADC组筛选出的特征构建模型,发现SVM模型表现最佳,AUC为0.87,敏感性为0.73(0.56 - 0.86),特异性为0.79(0.63 - 0.90),准确性为0.77(0.59 - 0.89)。结果差异具有统计学意义(<0.05)。

结论

ML预测模型对PCa具有良好的诊断能力。其中,融合组中的SVM模型在诊断PCa方面表现最佳。这些预测模型可帮助放射科医生做出更好的诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b4e/10227569/d1aac260b1db/fonc-13-1157949-g001.jpg

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