Improving the Post-Operative Prediction of BCR-Free Survival Time with mRNA Variables and Machine Learning

被引:3
|
作者
O'Donnell, Autumn [1 ]
Wolsztynski, Eric [1 ,2 ]
Cronin, Michael [1 ]
Moghaddam, Shirin [3 ]
机构
[1] Univ Coll Cork, Sch Math Sci, Western Gateway Bldg,Western Rd, Cork T12XF62, Ireland
[2] Univ Coll Cork, Insight SFI Ctr Data Analyt, Western Gateway Bldg,Western Rd, Cork T12 XF62, Ireland
[3] Univ Limerick, Dept Math & Stat MACSI, Limerick V94T9PX, Ireland
基金
爱尔兰科学基金会;
关键词
machine learning; survival analysis; prediction; statistical modelling; genomics; prostate cancer; biochemical recurrence; personalised medicine; bioinformatics; PROSTATE-CANCER RECURRENCE; RADICAL PROSTATECTOMY; PREOPERATIVE NEUTROPHIL; DISEASE RECURRENCE; LYMPHOCYTE RATIO; BIOCHEMICAL RECURRENCE; REGULARIZATION PATHS; EXPRESSION; NOMOGRAM; MODELS;
D O I
10.3390/cancers15041276
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Prostate cancer is among the most prevalent cancers for men globally, accounting for 13% of cancer diagnoses in the male population each year. Surgical intervention is the primary treatment option but fails in up to 40% of patients, who experience biochemical recurrence (BCR). Determining the likelihood of recurrence and the length of time between surgery and BCR is critical for patient treatment decision-making. Traditional predictive models exploit routine clinical variables such as cancer stage, and may be improved upon by leveraging other accessible information about the patient. This study considers including patient-specific genomic data to identify relevant additional predictors of BCR-free survival, which requires the use of modern machine learning techniques. The results of this study indicate that including such genomic data leads to a gain in BCR prediction performance over models using clinical variables only. Predicting the risk of, and time to biochemical recurrence (BCR) in prostate cancer patients post-operatively is critical in patient treatment decision pathways following surgical intervention. This study aimed to investigate the predictive potential of mRNA information to improve upon reference nomograms and clinical-only models, using a dataset of 187 patients that includes over 20,000 features. Several machine learning methodologies were implemented for the analysis of censored patient follow-up information with such high-dimensional genomic data. Our findings demonstrated the potential of inclusion of mRNA information for BCR-free survival prediction. A random survival forest pipeline was found to achieve high predictive performance with respect to discrimination, calibration, and net benefit. Two mRNA variables, namely ESM1 and DHAH8, were identified as consistently strong predictors with this dataset.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Pre-operative prediction of BCR-free survival with mRNA variables in prostate cancer
    O'Donnell, Autumn
    Cronin, Michael
    Moghaddam, Shirin
    Wolsztynski, Eric
    PLOS ONE, 2024, 19 (10):
  • [2] Development of machine learning models for post-operative recurrence prediction in lung cancer patients
    Ranganathan, Dhakshinamoorthy Dhayanitha
    Kumar, Thirunavukkarasu Muthu
    Shanthi, Veerappapillai
    Ramanathan, Karuppasamy
    RESEARCH JOURNAL OF BIOTECHNOLOGY, 2023, 18 (10): : 227 - 234
  • [3] Prediction of persistent post-operative pain: Pain-specific psychological variables compared with acute post-operative pain and general psychological variables
    Horn-Hofmann, C.
    Scheel, J.
    Dimova, V.
    Parthum, A.
    Carbon, R.
    Griessinger, N.
    Sittl, R.
    Lautenbacher, S.
    EUROPEAN JOURNAL OF PAIN, 2018, 22 (01) : 191 - 202
  • [4] Prediction of post-operative acute pancreatitis in children with pancreaticobiliary maljunction using machine learning model
    Cai, Tian-na
    Huang, Shun-gen
    Yang, Yang
    Mao, Hui-min
    Guo, Wan-liang
    PEDIATRIC SURGERY INTERNATIONAL, 2023, 39 (01)
  • [5] Machine Learning Based Prediction of Post-operative Infrarenal Endograft Apposition for Abdominal Aortic Aneurysms
    van Veldhuizen, Willemina A.
    de Vries, Jean-Paul P. M.
    Tuinstra, Annemarij
    Zuidema, Roy
    Ijpma, Frank F. A.
    Wolterink, Jelmer M.
    Schuurmann, Richte C. L.
    EUROPEAN JOURNAL OF VASCULAR AND ENDOVASCULAR SURGERY, 2024, 68 (05) : 568 - 576
  • [6] Prediction of post-operative acute pancreatitis in children with pancreaticobiliary maljunction using machine learning model
    Tian-na Cai
    Shun-gen Huang
    Yang Yang
    Hui-min Mao
    Wan-liang Guo
    Pediatric Surgery International, 39
  • [7] Supervised machine learning for the prediction of post-operative clinical outcomes of hip and knee replacements: a review
    Ghadirinejad, Khashayar
    Milimonfared, Roohollah
    Taylor, Mark
    Solomon, Lucian B.
    Graves, Stephen
    Pratt, Nicole
    de Steiger, Richard
    Hashemi, Reza
    ANZ JOURNAL OF SURGERY, 2024, 94 (7-8) : 1228 - 1233
  • [8] Pre-operative prediction of post-operative urinary retention in lumbar surgery: a prospective validation of machine learning model
    Ken Porche
    Carolina B. Maciel
    Brandon Lucke-Wold
    Yusuf Mehkri
    Yasmeen Murtaza
    Michael Goutnik
    Steven A. Robicsek
    Katharina M. Busl
    European Spine Journal, 2023, 32 : 3868 - 3874
  • [9] Early post-operative MRI: Correlation with progression-free survival and overall survival time in malignant gliomas
    Vidiri, A.
    Carapella, C. M.
    Pace, A.
    Mirri, A.
    Fabi, A.
    Carosi, M.
    Giannarelli, D.
    Pompili, A.
    Jandolo, B.
    Occhipinti, E.
    Di Giovanni, S.
    Crecco, M.
    JOURNAL OF EXPERIMENTAL & CLINICAL CANCER RESEARCH, 2006, 25 (02) : 177 - 182
  • [10] Pre-operative prediction of post-operative urinary retention in lumbar surgery: a prospective validation of machine learning model
    Porche, Ken
    Maciel, Carolina B.
    Lucke-Wold, Brandon
    Mehkri, Yusuf
    Murtaza, Yasmeen
    Goutnik, Michael
    Robicsek, Steven A.
    Busl, Katharina M.
    EUROPEAN SPINE JOURNAL, 2023, 32 (11) : 3868 - 3874