A Machine Learning Model Based on Counterfactual Theory for Treatment Decision of Hepatocellular Carcinoma Patients

被引:1
|
作者
Wei, Xiaoqin [1 ]
Wang, Fang [2 ]
Liu, Ying [3 ]
Li, Zeyong [4 ]
Xue, Zhong [2 ]
Tang, Mingyue [5 ]
Chen, Xiaowen [1 ]
机构
[1] North Sichuan Med Coll, Sch Med Imaging, 234 Fujiang Rd, Nanchong 637001, Sichuan, Peoples R China
[2] Shanghai United Imaging Intelligence Co Ltd, Dept Res & Dev, Shanghai, Peoples R China
[3] Chengdu Med Coll, Affiliated Hosp 1, Dept Orthoped, Chengdu, Sichuan, Peoples R China
[4] Chongqing Med Univ, Dept Radiol, Bishan Hosp, Chongqing, Peoples R China
[5] North Sichuan Med Coll, Sch Basic Med, Dept Phys, Nanchong, Peoples R China
关键词
radiomics; hepatocellular carcinoma; prognosis; hepatectomy; TRANSARTERIAL CHEMOEMBOLIZATION; HEPATIC RESECTION; PARTIAL-HEPATECTOMY; LIVER RESECTION; SURVIVAL;
D O I
10.2147/JHC.S470550
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Purpose: To predict the efficacy of patients treated with hepatectomy and transarterial chemoembolization (TACE) based on machine learning models using clinical and radiomics features. Patients and Methods: Patients with HCC whose first treatment was hepatectomy or TACE from June 2016 to July 2021 were collected in the retrospective cohort study. To ensure a causal effect of treatment effect and treatment modality, perfectly matched patients were obtained according to the principle of propensity score matching and used as an independent test cohort. Inverse probability of treatment weighting was used to control bias for unmatched patients, and the weighted results were used as the training cohort. Clinical characteristics were selected by univariate and multivariate analysis of cox proportional hazards regression, and radiomics features were selected using correlation analysis and random survival forest. The machine learning models (Death hepatectomy and DeathTACE) TACE ) were constructed to predict the probability of patient death after treatment (hepatectomy and TACE) by combining clinical and radiomics features, and an optimal treatment regimen was recommended. In addition, a prognostic model was constructed to predict the survival time of all patients. Results: A total of 418 patients with HCC who received either hepatectomy (n=267, mean age, 58 years +/- 11 [standard deviation]; 228 men) or TACE (n=151, mean age, 59 years +/- 13 [standard deviation]; 127 men) were recruited. After constructing the machine learning models Death hepatectomy and DeathTACE, TACE , patients were divided into the hepatectomy-preferred and TACE-preferred groups. In the hepatectomy-preferred group, hepatectomy had a significantly prolonged survival time than TACE (training cohort: P < 0.001; testing cohort: P < 0.001), and vise versa for the TACE-preferred group. In addition, the prognostic model yielded high predictive capability for overall survival. Conclusion: The machine learning models could predict the outcomes difference between hepatectomy and TACE, and prognostic models could predict the overall survival for HCC patients.
引用
收藏
页码:1675 / 1687
页数:13
相关论文
共 50 条
  • [31] Machine learning-based clinical decision support system for treatment recommendation and overall survival prediction of hepatocellular carcinoma: a multi-center study
    Lee, Kyung Hwa
    Choi, Gwang Hyeon
    Yun, Jihye
    Choi, Jonggi
    Goh, Myung Ji
    Sinn, Dong Hyun
    Jin, Young Joo
    Kim, Minseok Albert
    Yu, Su Jong
    Jang, Sangmi
    Lee, Soon Kyu
    Jang, Jeong Won
    Lee, Jae Seung
    Kim, Do Young
    Cho, Young Youn
    Kim, Hyung Joon
    Kim, Sehwa
    Kim, Ji Hoon
    Kim, Namkug
    Kim, Kang Mo
    NPJ DIGITAL MEDICINE, 2024, 7 (01)
  • [32] Machine learning for risk stratification of hepatocellular carcinoma
    Clusmann, Jan
    Koop, Paul-Henry
    van Haag, Felix
    Chen, Yazhou
    Laevens, Benjamin P. M.
    Trautwein, Christian
    Schneider, Kai Markus
    Kather, Jakob Nikolas
    Schneider, Carolin V.
    JOURNAL OF HEPATOLOGY, 2024, 80 : S392 - S392
  • [33] Detection of key mRNAs in liver tissue of hepatocellular carcinoma patients based on machine learning and bioinformatics analysis
    Gholizadeh, Maryam
    Mazlooman, Seyed Reza
    Hadizadeh, Morteza
    Drozdzik, Marek
    Eslami, Saeid
    METHODSX, 2023, 10
  • [34] Recurrence predictive models for patients with hepatocellular carcinoma after radiofrequency ablation based on machine learning algorithms
    Liang, Ja-Der
    Yang, Ta-Wei
    Chen, Po-When
    Chou, Cheng-Fu
    Wu, Yao-Ming
    CLINICAL CANCER RESEARCH, 2021, 27 (05)
  • [35] A Machine Learning Model to Predict Hepatocellular Carcinoma Response to Transcatheter Arterial Chemoembolization
    Morshid, Ali
    Elsayes, Khaled M.
    Khalaf, Ahmed M.
    Elmohr, Mohab M.
    Yu, Justin
    Kaseb, Ahmed O.
    Hassan, Manal
    Mahvash, Armeen
    Wang, Zhihui
    Hazle, John D.
    Fuentes, David
    RADIOLOGY-ARTIFICIAL INTELLIGENCE, 2019, 1 (05)
  • [36] Conventional and machine learning-based risk scores for patients with early-stage hepatocellular carcinoma
    Ho, Chun-Ting
    Tan, Elise Chia-Hui
    Lee, Pei-Chang
    Chu, Chi-Jen
    Huang, Yi-Hsiang
    Huo, Teh-Ia
    Su, Yu-Hui
    Hou, Ming-Chih
    Wu, Jaw-Ching
    Su, Chien-Wei
    CLINICAL AND MOLECULAR HEPATOLOGY, 2024, 30 (03)
  • [37] New algorithm to identify patients at higher risk to develop hepatocellular carcinoma, based on machine learning approach
    Martini, A.
    Stefanelli, D.
    Biasiolo, A.
    Tonon, M.
    Piano, S.
    Gregori, D.
    Angeli, P.
    Pontisso, P.
    DIGESTIVE AND LIVER DISEASE, 2022, 54 : S166 - S166
  • [38] Automated graded prognostic assessment for patients with hepatocellular carcinoma using machine learning
    Gross, Moritz
    Haider, Stefan P.
    Ze'evi, Tal
    Huber, Steffen
    Arora, Sandeep
    Kucukkaya, Ahmet S.
    Iseke, Simon
    Gebauer, Bernhard
    Fleckenstein, Florian
    Dewey, Marc
    Jaffe, Ariel
    Strazzabosco, Mario
    Chapiro, Julius
    Onofrey, John A.
    EUROPEAN RADIOLOGY, 2024, 34 (10) : 6940 - 6952
  • [39] Role of Etiology in Hepatocellular Carcinoma Patients Treated with Lenvatinib: A Counterfactual Event-Based Mediation Analysis
    Sacco, Rodolfo
    Ramai, Daryl
    Tortora, Raffaella
    di Costanzo, Giovan Giuseppe
    Burlone, Michela Emma
    Pirisi, Mario
    Federico, Piera
    Daniele, Bruno
    Silletta, Marianna
    Gallo, Paolo
    Cocuzza, Caterina
    Russello, Maurizio
    Cabibbo, Giuseppe
    Rancatore, Gabriele
    Cesario, Silvia
    Masi, Gianluca
    Marzi, Luca
    Mega, Andrea
    Granito, Alessandro
    Pieri, Giulia
    Giannini, Edoardo G. G.
    Paolillo, Rosa
    Gadaleta-Caldarola, Gennaro
    Dadduzio, Vincenzo
    Giordano, Guido
    Giacomelli, Luca
    Papa, Simonetta
    Renzulli, Matteo
    Maida, Marcello
    Ghidini, Michele
    Borzio, Mauro
    Facciorusso, Antonio
    CANCERS, 2023, 15 (02)
  • [40] Prediction of Early Treatment Response to Initial Conventional Transarterial Chemoembolization Therapy for Hepatocellular Carcinoma by Machine-Learning Model Based on Computed Tomography
    Dong, Zhi
    Lin, Yingyu
    Lin, Fangzeng
    Luo, Xuyi
    Lin, Zhi
    Zhang, Yinhong
    Li, Lujie
    Li, Zi-Ping
    Feng, Shi-Ting
    Cai, Huasong
    Peng, Zhenpeng
    JOURNAL OF HEPATOCELLULAR CARCINOMA, 2021, 8 : 1473 - 1484