基于超声放射组学结合临床和影像学特征的机器学习方法预测移植后1年肾功能

IF 2.5 4区 医学 Q1 ACOUSTICS
Lili Zhu, Renjun Huang, Zhiyong Zhou, Qingmin Fan, Junchen Yan, Xiaojing Wan, Xiaojun Zhao, Yao He, Fenglin Dong
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引用次数: 0

摘要

肾移植是晚期慢性肾病(CKD)最有效的治疗方法。如果能在移植后早期预测移植预后,可能会提高移植肾患者的长期生存。目前,利用放射组学技术评估和预测肾功能的研究还很有限。因此,本研究旨在探讨基于超声(US)成像和放射组学特征的价值,并结合临床特征,开发和验证使用不同机器学习算法预测1年后移植肾功能(TKF-1Y)的模型。根据移植后1年肾小球滤过率(eGFR)水平,将189例患者分为TKF-1Y异常组和TKF-1Y正常组。放射组学特征来源于每个病例的美国图像。采用三种机器学习方法建立不同的模型,使用从训练集中选择的临床和超声成像以及放射组学特征来预测TKF-1Y。选择2个美国影像,4个临床和6个放射组学特征。然后,建立临床(包括临床和US图像特征)、放射组学和联合模型。在测试集中,模型的曲线下面积(auc)为0.62 ~ 0.82。联合模型的auc高于放射组学模型(p值均> 0.05)。总之,超声影像特征结合临床特征可以预测TKF-1Y,并比放射组学特征产生增量值。整合所有可用特征的模型可以进一步提高预测效果。不同的机器学习算法可能不会对模型的预测性能产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Renal Function 1 Year After Transplantation Using Machine Learning Methods Based on Ultrasound Radiomics Combined With Clinical and Imaging Features.

Kidney transplantation is the most effective treatment for advanced chronic kidney disease (CKD). If the prognosis of transplantation can be predicted early after transplantation, it might improve the long-term survival of patients with transplanted kidneys. Currently, studies on the assessment and prediction of renal function by radiomics are limited. Therefore, the present study aimed to explore the value of ultrasound (US)-based imaging and radiomics features, combined with clinical features to develop and validate the models for predicting transplanted kidney function after 1 year (TKF-1Y) using different machine learning algorithms. A total of 189 patients were included and classified into the abnormal TKF-1Y group, and the normal TKF-1Y group based on their estimated glomerular filtration rate (eGFR) levels 1 year after transplantation. The radiomics features were derived from the US images of each case. Three machine learning methods were employed to establish different models for predicting TKF-1Y using selected clinical and US imaging as well as radiomics features from the training set. Two US imaging, four clinical, and six radiomics features were selected. Then, the clinical (including clinical and US image features), radiomics, and combined models were developed. The area under the curves (AUCs) of the models was 0.62 to 0.82 within the test set. Combined models showed statistically higher AUCs than the radiomics models (all p-values <.05). The prediction performance of different models was not significantly affected by the different machine learning algorithms (all p-values >.05). In conclusion, US imaging features combined with clinical features could predict TKF-1Y and yield an incremental value over radiomics features. A model integrating all available features may further improve the predictive efficacy. Different machine learning algorithms may not have a significant impact on the predictive performance of the model.

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来源期刊
Ultrasonic Imaging
Ultrasonic Imaging 医学-工程:生物医学
CiteScore
5.10
自引率
8.70%
发文量
15
审稿时长
>12 weeks
期刊介绍: Ultrasonic Imaging provides rapid publication for original and exceptional papers concerned with the development and application of ultrasonic-imaging technology. Ultrasonic Imaging publishes articles in the following areas: theoretical and experimental aspects of advanced methods and instrumentation for imaging
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