Time-related survival prediction in molecular subtypes of breast cancer using time-to-event deep-learning-based models

被引:7
|
作者
Shahraki, Saba Zarean [1 ]
Looha, Mehdi Azizmohammad [2 ]
Kazaj, Pooya Mohammadi [3 ]
Aria, Mehrad [4 ]
Akbari, Atieh [5 ]
Emami, Hassan [1 ]
Asadi, Farkhondeh [1 ]
Akbari, Mohammad Esmaeil [5 ]
机构
[1] Shahid Beheshti Univ Med Sci, Sch Allied Med Sci, Dept Hlth Informat Technol & Management, Tehran, Iran
[2] Shahid Beheshti Univ Med Sci, Res Inst Gastroenterol & Liver Dis, Basic & Mol Epidemiol Gastrointestinal Disorders R, Tehran, Iran
[3] KN Toosi Univ Technol, Fac Geodesy & Geomat Engn, Geog Informat Syst Dept, Tehran, Iran
[4] Azarbaijan Shahid Madani Univ, Fac Informat Technol & Comp Engn, Tehran, Iran
[5] Shahid Beheshti Univ Med Sci, Canc Res Ctr, Tehran, Iran
来源
FRONTIERS IN ONCOLOGY | 2023年 / 13卷
关键词
breast cancer survival prediction; breast cancer molecular subtypes; survival prediction models; survival analysis; time-to-event machine learning models; deep learning survival models; feature importance; AI application in breast cancer; DISEASE-FREE SURVIVAL; PROGNOSTIC-FACTORS; CLASSIFICATION; STAGE; AMPLIFICATION; TRASTUZUMAB; MANAGEMENT; THERAPY; RELAPSE; COHORT;
D O I
10.3389/fonc.2023.1147604
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
BackgroundBreast cancer (BC) survival prediction can be a helpful tool for identifying important factors selecting the effective treatment reducing mortality rates. This study aims to predict the time-related survival probability of BC patients in different molecular subtypes over 30 years of follow-up. Materials and methodsThis study retrospectively analyzed 3580 patients diagnosed with invasive breast cancer (BC) from 1991 to 2021 in the Cancer Research Center of Shahid Beheshti University of Medical Science. The dataset contained 18 predictor variables and two dependent variables, which referred to the survival status of patients and the time patients survived from diagnosis. Feature importance was performed using the random forest algorithm to identify significant prognostic factors. Time-to-event deep-learning-based models, including Nnet-survival, DeepHit, DeepSurve, NMLTR and Cox-time, were developed using a grid search approach with all variables initially and then with only the most important variables selected from feature importance. The performance metrics used to determine the best-performing model were C-index and IBS. Additionally, the dataset was clustered based on molecular receptor status (i.e., luminal A, luminal B, HER2-enriched, and triple-negative), and the best-performing prediction model was used to estimate survival probability for each molecular subtype. ResultsThe random forest method identified tumor state, age at diagnosis, and lymph node status as the best subset of variables for predicting breast cancer (BC) survival probabilities. All models yielded very close performance, with Nnet-survival (C-index=0.77, IBS=0.13) slightly higher using all 18 variables or the three most important variables. The results showed that the Luminal A had the highest predicted BC survival probabilities, while triple-negative and HER2-enriched had the lowest predicted survival probabilities over time. Additionally, the luminal B subtype followed a similar trend as luminal A for the first five years, after which the predicted survival probability decreased steadily in 10- and 15-year intervals. ConclusionThis study provides valuable insight into the survival probability of patients based on their molecular receptor status, particularly for HER2-positive patients. This information can be used by healthcare providers to make informed decisions regarding the appropriateness of medical interventions for high-risk patients. Future clinical trials should further explore the response of different molecular subtypes to treatment in order to optimize the efficacy of breast cancer treatments.
引用
收藏
页数:13
相关论文
共 43 条
  • [1] Time-to-event learning paradigm as a generalized approach to estimate risk of breast cancer using image- based deep learning models
    Louis, Thomas
    Pacile, Serena
    Fillard, Pierre
    17TH INTERNATIONAL WORKSHOP ON BREAST IMAGING, IWBI 2024, 2024, 13174
  • [2] Time-to-event prediction using survival analysis methods for Alzheimer's disease progression
    Sharma, Rahul
    Anand, Harsh
    Badr, Youakim
    Qiu, Robin G.
    ALZHEIMERS & DEMENTIA-TRANSLATIONAL RESEARCH & CLINICAL INTERVENTIONS, 2021, 7 (01)
  • [3] Tabular GAN-Based Oversampling of Imbalanced Time-to-Event Data for Survival Prediction
    Tan, Huaning
    Chen, Renxing
    Qin, Meng
    Tang, Lining
    Wu, Zhibing
    Luo, Qianlin
    Quan, Yujuan
    2023 8TH INTERNATIONAL CONFERENCE ON CLOUD COMPUTING AND BIG DATA ANALYTICS, ICCCBDA, 2023, : 376 - 380
  • [4] Bayesian mediation analysis for time-to-event outcome: Investigating racial disparity in breast cancer survival
    Yu, Qingzhao
    Cao, Wentao
    Mercante, Donald
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2024, 54 (01) : 242 - 258
  • [5] Somatic Copy Number Alteration-Based Prediction of Molecular Subtypes of Breast Cancer Using Deep Learning Model
    Islam, Md. Mohaiminul
    Ajwad, Rasif
    Chi, Chen
    Domaratzki, Michael
    Wang, Yang
    Hu, Pingzhao
    ADVANCES IN ARTIFICIAL INTELLIGENCE, CANADIAN AI 2017, 2017, 10233 : 57 - 63
  • [6] Inference in spline-based models for multiple time-to-event data, with applications to a breast cancer prevention trial
    Berhane, K
    Weissfeld, LA
    BIOMETRICS, 2003, 59 (04) : 859 - 868
  • [7] Prediction of sports injuries in football: a recurrent time-to-event approach using regularized Cox models
    Lore Zumeta-Olaskoaga
    Maximilian Weigert
    Jon Larruskain
    Eder Bikandi
    Igor Setuain
    Josean Lekue
    Helmut Küchenhoff
    Dae-Jin Lee
    AStA Advances in Statistical Analysis, 2023, 107 : 101 - 126
  • [8] Prediction of sports injuries in football: a recurrent time-to-event approach using regularized Cox models
    Zumeta-Olaskoaga, Lore
    Weigert, Maximilian
    Larruskain, Jon
    Bikandi, Eder
    Setuain, Igor
    Lekue, Josean
    Kuechenhoff, Helmut
    Lee, Dae-Jin
    ASTA-ADVANCES IN STATISTICAL ANALYSIS, 2023, 107 (1-2) : 101 - 126
  • [9] A Naive Bayes machine learning approach to risk prediction using censored, time-to-event data
    Wolfson, Julian
    Bandyopadhyay, Sunayan
    Elidrisi, Mohamed
    Vazquez-Benitez, Gabriela
    Vock, David M.
    Musgrove, Donald
    Adomavicius, Gediminas
    Johnson, Paul E.
    O'Connor, Patrick J.
    STATISTICS IN MEDICINE, 2015, 34 (21) : 2941 - 2957
  • [10] An overview of techniques for linking high-dimensional molecular data to time-to-event endpoints by risk prediction models
    Binder, Harald
    Porzelius, Christine
    Schumacher, Martin
    BIOMETRICAL JOURNAL, 2011, 53 (02) : 170 - 189