Development and validation of machine learning model for predicting treatment responders in patients with primary biliary cholangitis

被引:0
|
作者
Kimura, Naruhiro [1 ]
Takahashi, Kazuya [1 ]
Setsu, Toru [1 ]
Horibata, Yusuke [1 ]
Kaneko, Yusuke [1 ]
Miyazaki, Haruka [1 ]
Ogawa, Kohei [1 ]
Kawata, Yuzo [1 ]
Sakai, Norihiro [1 ]
Watanabe, Yusuke [1 ]
Abe, Hiroyuki [1 ]
Kamimura, Hiroteru [1 ]
Sakamaki, Akira [1 ]
Yokoo, Takeshi [1 ]
Kamimura, Kenya [1 ]
Tsuchiya, Atsunori [1 ]
Terai, Shuji [1 ]
机构
[1] Niigata Univ, Grad Sch Med & Dent Sci, Div Gastroenterol & Hepatol, 1-757 Asahimachi Dori,Chuo Ku, Niigata 9518510, Japan
关键词
biochemical response; machine learning; Paris II criteria; prediction; primary biliary cholangitis; URSODEOXYCHOLIC ACID; BIOCHEMICAL RESPONSE; CIRRHOSIS; PROGNOSIS;
D O I
10.1111/hepr.13966
中图分类号
R57 [消化系及腹部疾病];
学科分类号
摘要
AimsUrsodeoxycholic acid is the first-line treatment for primary biliary cholangitis, and treatment response is one of the factors predicting the outcome. To prescribe alternative therapies, clinicians might need additional information before deciphering the treatment response to ursodeoxycholic acid, contributing to a better patient prognosis. In this study, we developed and validated machine learning (ML) algorithms to predict treatment responses using pretreatment data.MethodsThis multicenter cohort study included collecting datasets from two data samples. Data 1 included 245 patients from 18 hospitals for ML development, and was divided into (i) training and (ii) development sets. Data 2 (iii: test set) included 51 patients from our hospital for validation. An extreme gradient boosted tree predicted the treatment response in the ML model. The area under the curve was used to evaluate the efficacy of the algorithm.ResultsData 1 showed that patients complying with the Paris II treatment response had significantly lower serum alkaline phosphatase and total bilirubin levels than those who did not respond. Three factors, total bilirubin, total protein, and alanine aminotransferase levels were selected as essential variables for prediction. Data 2 showed that patients complying with the Paris II criteria had significantly high prothrombin time and low total bilirubin levels. The area under the curve of extreme gradient boosted tree was good for (ii) (0.811) and (iii) (0.856).ConclusionsWe demonstrated the efficacy of ML in predicting the treatment response for patients with primary biliary cholangitis. Early identification of cases requiring additional treatment with our novel ML model may improve prognosis. image
引用
收藏
页码:67 / 77
页数:11
相关论文
共 50 条
  • [1] Machine learning prediction model for treatment responders in patients with primary biliary cholangitis
    Kimura, Naruhiro
    Takahashi, Kazuya
    Setsu, Toru
    Goto, Shu
    Miida, Suguru
    Takeda, Nobutaka
    Kojima, Yuichi
    Arao, Yoshihisa
    Hayashi, Kazunao
    Sakai, Norihiro
    Watanabe, Yusuke
    Abe, Hiroyuki
    Kamimura, Hiroteru
    Sakamaki, Akira
    Yokoo, Takeshi
    Kamimura, Kenya
    Tsuchiya, Atsunori
    Terai, Shuji
    [J]. JGH OPEN, 2023, 7 (06): : 431 - 438
  • [2] Treatment of Primary Biliary Cholangitis Non-Responders
    Suraweera, Duminda
    Rahal, Harman
    Jimenez, Melissa
    Viramontes, Matthew R.
    Choi, Gina
    Saab, Sammy
    [J]. AMERICAN JOURNAL OF GASTROENTEROLOGY, 2017, 112 : S1453 - S1453
  • [3] DERIVATION OF A MACHINE LEARNING MODEL TO PREDICT CLINICAL OUTCOME IN PATIENTS WITH PRIMARY BILIARY CHOLANGITIS
    Goet, Jorn
    Roberts, Surain
    Hirschfield, Gideon
    Invernizzi, Pietro
    Carbone, Marco
    Trivedi, Palak
    Corpechot, Christophe
    Janssen, Harry L. A.
    de Veer, Rozanne
    Lammers, Willem J.
    Mayo, Marlyn J.
    Battezzati, Pier M.
    Floreani, Annarosa
    Pares, Albert
    Nevens, Frederik
    Mason, Andrew L.
    Kowdley, Kris V.
    Ponsioen, Cyriel
    Bruns, Tony
    Dalekos, George N.
    Thorburn, Douglas
    Verhelst, Xavier
    Lindor, Keith D.
    Van der Meer, Adriaan J.
    Goet, Niels D.
    Hansen, Bettina E.
    Van Buuren, Henk R.
    [J]. HEPATOLOGY, 2019, 70 : 760A - 761A
  • [4] Predicting the Survival of Primary Biliary Cholangitis Patients
    Ferreira, Diana
    Neto, Cristiana
    Lopes, Jose
    Duarte, Julio
    Abelha, Antonio
    Machado, Jose
    [J]. APPLIED SCIENCES-BASEL, 2022, 12 (16):
  • [5] Management of primary biliary cholangitis: the importance to identify patients' non-responders to standard treatment
    Mendez-Sanchez, Nahum
    [J]. MINERVA MEDICA, 2018, 109 (06) : 407 - 409
  • [6] Predicting Risk in Primary Biliary Cholangitis
    Eksteen, Bertus
    [J]. HEPATOLOGY, 2016, 63 (03) : 697 - 699
  • [7] Predicting Risk in Primary Biliary Cholangitis
    Cho, Eun Ju
    [J]. GUT AND LIVER, 2023, 17 (04) : 491 - 492
  • [8] Treatment of primary biliary cholangitis ursodeoxycholic acid non-responders: A systematic review
    Suraweera, Duminda
    Rahal, Harman
    Jimenez, Melissa
    Viramontes, Matthew
    Choi, Gina
    Saab, Sammy
    [J]. LIVER INTERNATIONAL, 2017, 37 (12) : 1877 - 1886
  • [9] Machine learning in primary biliary cholangitis: A novel approach for risk stratification
    Gerussi, Alessio
    Verda, Damiano
    Bernasconi, Davide Paolo
    Carbone, Marco
    Komori, Atsumasa
    Abe, Masanori
    Inao, Mie
    Namisaki, Tadashi
    Mochida, Satoshi
    Yoshiji, Hitoshi
    Hirschfield, Gideon
    Lindor, Keith
    Pares, Albert
    Corpechot, Christophe
    Cazzagon, Nora
    Floreani, Annarosa
    Marzioni, Marco
    Alvaro, Domenico
    Vespasiani-Gentilucci, Umberto
    Cristoferi, Laura
    Valsecchi, Maria Grazia
    Muselli, Marco
    Hansen, Bettina E.
    Tanaka, Atsushi
    Invernizzi, Pietro
    [J]. LIVER INTERNATIONAL, 2022, 42 (03) : 615 - 627
  • [10] Primary biliary cholangitis: treatment
    Cazzagon, Nora
    Floreani, Annarosa
    [J]. CURRENT OPINION IN GASTROENTEROLOGY, 2021, 37 (02) : 99 - 104