Machine learning-based radiomics analysis of preoperative functional liver reserve with MRI and CT image

被引:4
|
作者
Zhu, Ling [1 ]
Wang, Feifei [1 ]
Chen, Xue [1 ,2 ]
Dong, Qian [1 ,3 ]
Xia, Nan [1 ,2 ]
Chen, Jingjing [4 ]
Li, Zheng [5 ]
Zhu, Chengzhan [1 ,6 ]
机构
[1] Qingdao Univ, Affiliated Hosp, Shandong Key Lab Digital Med & Comp Assisted Surg, Qingdao, Peoples R China
[2] Qingdao Univ, Inst Digital Med & Comp Assisted Surg, Qingdao, Peoples R China
[3] Qingdao Univ, Affiliated Hosp, Dept Pediat Surg, Qingdao, Peoples R China
[4] Qingdao Univ, Affiliated Hosp, Dept Radiol, Qingdao, Peoples R China
[5] Qingdao Hisense Med Equipment Co Ltd, Qingdao, Peoples R China
[6] Qingdao Univ, Affiliated Hosp, Dept Hepatobiliary & Pancreat Surg, Qingdao, Peoples R China
关键词
Radiomics; Functional liver reserve; Machine learning; Gd-EOB-DTPA-enhanced hepatic MRI; Contrast-enhanced CT; HEPATOCELLULAR-CARCINOMA; HEPATIC RESECTION; LI-RADS; DIAGNOSIS; CANCER;
D O I
10.1186/s12880-023-01050-1
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
ObjectiveThe indocyanine green retention rate at 15 min (ICG-R15) is a useful tool to evaluate the functional liver reserve before hepatectomy for liver cancer. Taking ICG-R15 as criteria, we investigated the ability of a machine learning (ML)-based radiomics model produced by Gd-EOB-DTPA-enhanced hepatic magnetic resonance imaging (MRI) or contrast-enhanced computed tomography (CT) image in evaluating functional liver reserve of hepatocellular carcinoma (HCC) patients.MethodsA total of 190 HCC patients with CT, among whom 112 also with MR, were retrospectively enrolled and randomly classified into a training dataset (CT: n = 133, MR: n = 78) and a test dataset (CT: n = 57, MR: n = 34). Then, radiomics features from Gd-EOB-DTPA MRI and CT images were extracted. The features associated with the ICG-R15 classification were selected. Five ML classifiers were used for the ML-model investigation. The accuracy (ACC) and the area under curve (AUC) of receiver operating characteristic (ROC) with 95% confidence intervals (CI) were utilized for ML-model performance evaluation.ResultsA total of 107 different radiomics features were extracted from MRI and CT, respectively. The features related to ICG-R15 which was classified into 10%, 20% and 30% were selected. In MRI groups, classifier XGBoost performed best with its AUC = 0.917 and ACC = 0.882 when the threshold was set as ICG-R15 = 10%. When ICG-R15 = 20%, classifier Random Forest performed best with AUC = 0.979 and ACC = 0.882. When ICG-R15 = 30%, classifier XGBoost performed best with AUC = 0.961 and ACC = 0.941. For CT groups, the classifier XGBoost performed best when ICG-R15 = 10% with AUC = 0.822 and ACC = 0.842. When ICG-R15 = 20%, classifier SVM performed best with AUC = 0.860 and ACC = 0.842. When ICG-R15 = 30%, classifier XGBoost performed best with AUC = 0.938 and ACC = 0.965.ConclusionsBoth the MRI- and CT-based machine learning models are proved to be valuable noninvasive methods for functional liver reserve evaluation.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Machine learning-based CT radiomics model to discriminate the primary and secondary intracranial hemorrhage
    Lyu, Jianbo
    Xu, Zhaohui
    Sun, HaiYan
    Zhai, Fangbing
    Qu, Xiaofeng
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [22] Machine Learning-Based CT Radiomics Method for Identifying the Stage of Wilms Tumor in Children
    Ma, Xiao-Hui
    Shu, Liqi
    Jia, Xuan
    Zhou, Hai-Chun
    Liu, Ting-Ting
    Liang, Jia-Wei
    Ding, Yu-shuang
    He, Min
    Shu, Qiang
    FRONTIERS IN PEDIATRICS, 2022, 10
  • [23] Machine learning-based CT radiomics model to discriminate the primary and secondary intracranial hemorrhage
    Jianbo Lyu
    Zhaohui Xu
    HaiYan Sun
    Fangbing Zhai
    Xiaofeng Qu
    Scientific Reports, 13
  • [24] Machine learning-based radiomics in neurodegenerative and cerebrovascular disease
    Shi, Ming-Ge
    Feng, Xin-Meng
    Zhi, Hao-Yang
    Hou, Lei
    Feng, Dong-Fu
    MEDCOMM, 2024, 5 (11):
  • [25] Machine Learning-Based Radiomics for Molecular Subtyping of Gliomas
    Lu, Chia-Feng
    Hsu, Fei-Ting
    Hsieh, Kevin Li-Chun
    Kao, Yu-Chieh Jill
    Cheng, Sho-Jen
    Hsu, Justin Bo-Kai
    Tsai, Ping-Huei
    Chen, Ray-Jade
    Huang, Chao-Ching
    Yen, Yun
    Chen, Cheng-Yu
    CLINICAL CANCER RESEARCH, 2018, 24 (18) : 4429 - 4436
  • [26] Machine Learning-Based Analysis of Magnetic Resonance Radiomics for the Classification of Gliosarcoma and Glioblastoma
    Qian, Zenghui
    Zhang, Lingling
    Hu, Jie
    Chen, Shuguang
    Chen, Hongyan
    Shen, Huicong
    Zheng, Fei
    Zang, Yuying
    Chen, Xuzhu
    FRONTIERS IN ONCOLOGY, 2021, 11
  • [27] Radiomics Analysis of Gd-EOB-DTPA Enhanced Hepatic MRI for Assessment of Functional Liver Reserve
    Shi, Zhaoqi
    Cai, Wenli
    Feng, Xu
    Cai, Jingwei
    Liang, Yuelong
    Xu, Junjie
    Zhen, Junhao
    Liang, Xiao
    ACADEMIC RADIOLOGY, 2022, 29 (02) : 213 - 218
  • [28] Prediction of prostate cancer aggressiveness with a combination of radiomics and machine learning-based analysis of dynamic contrast-enhanced MRI
    Liu, B.
    Cheng, J.
    Guo, D. J.
    He, X. J.
    Luo, Y. D.
    Zeng, Y.
    Li, C. M.
    CLINICAL RADIOLOGY, 2019, 74 (11) : 896.e1 - 896.e8
  • [29] Machine Learning-Based Diffractive Image Analysis with Subwavelength Resolution
    Ghosh, Abantika
    Roth, Diane J.
    Nicholls, Luke H.
    Wardley, William P.
    Zayats, Anatoly, V
    Podolskiy, Viktor A.
    ACS PHOTONICS, 2021, 8 (05) : 1448 - 1456
  • [30] Image analysis and machine learning-based malaria assessment system
    Manning, Kyle
    Zhai, Xiaojun
    Yu, Wangyang
    DIGITAL COMMUNICATIONS AND NETWORKS, 2022, 8 (02) : 132 - 142