Machine learning-based radiomics models for prediction of locoregional recurrence in patients with breast cancer

被引:5
|
作者
Lee, Joongyo [1 ,2 ]
Yoo, Sang Kyun [1 ]
Kim, Kangpyo [1 ,3 ]
Lee, Byung Min [1 ,4 ]
Park, Vivian Youngjean [5 ,6 ]
Kim, Jin Sung [1 ]
Kim, Yong Bae [1 ]
机构
[1] Yonsei Univ, Yonsei Univ Hlth Syst, Heavy Ion Therapy Res Inst, Dept Radiat Oncol,Yonsei Canc Ctr,Coll Med, 50-1 Yonsei ro, Seoul 03722, South Korea
[2] Yonsei Univ, Yonsei Univ Hlth Syst, Gangnam Severance Hosp, Dept Radiat Oncol,Coll Med, Seoul 06273, South Korea
[3] Sungkyunkwan Univ, Sch Med, Samsung Med Ctr, Dept Radiat Oncol,Yonsei Univ Hlth Syst, Seoul 06351, South Korea
[4] Catholic Univ Korea, Coll Med, Uijeongbu St Marys Hosp, Dept Radiol,Yonsei Univ Hlth Syst, Uijongbu 480130, South Korea
[5] Yonsei Univ, Res Inst Radiol Sci, Yonsei Univ Hlth Syst, Coll Med,Dept Radiol, Seoul 03722, South Korea
[6] Yonsei Univ, Yonsei Univ Hlth Syst, Ctr Clin Imaging Data Sci, Yonsei Canc Ctr,Coll Med, Seoul 03722, South Korea
关键词
MRI; breast cancer; locoregional neoplasm recurrences; radiomics; ML; PRIMARY CHEMOTHERAPY; TEXTURE ANALYSIS; SURVIVAL; HETEROGENEITY; MASTECTOMY; PROGNOSIS; MRI;
D O I
10.3892/ol.2023.14008
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Locoregional recurrence (LRR) is the predominant pattern of relapse after definitive breast cancer treatment. The present study aimed to develop machine learning (ML)-based radiomics models to predict LRR in patients with breast cancer by using preoperative magnetic resonance imaging (MRI) data. Data from patients with localized breast cancer that underwent preoperative MRI between January 2013 and December 2017 were collected. Propensity score matching (PSM) was performed to adjust for clinical factors between patients with and without LRR. Radiomics features were obtained from T2-weighted with and without fat-suppressed MRI and contrast-enhanced T1-weighted with fat-suppressed MRI. In the present study five ML models were designed, three base models (support vector machine, random forest, and logistic regression) and two ensemble models (voting model and stacking model) composed of the three base models, and the performance of each base model was compared with the stacking model. After PSM, 28 patients with LRR and 86 patients without LRR were included. Of these 114 patients, 80 patients were randomly selected to train the models, and the remaining 34 patients were used to evaluate the performance of the trained models. In total, 5,064 features were obtained from each patient, and 47-51 features were selected by applying variance threshold and least absolute shrinkage and selection operator. The stacking model demonstrated superior performance in area under the receiver operating characteristic curve (AUC), with an AUC of 0.78 compared to a range of 0.61 to 0.70 for the other models. An external validation study to investigate the efficacy of the stacking model of the present study was initiated and is still ongoing (Korean Radiation Oncology Group 2206).
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Machine learning-based CT radiomics features for the prediction of pulmonary metastasis in osteosarcoma
    Pereira, Helcio Mendonca
    Leite Duarte, Maria Eugenia
    Damasceno, Igor Ribeiro
    Moura Santos, Luiz Afonso de Oliveira
    Nogueira-Barbosa, Marcello Henrique
    BRITISH JOURNAL OF RADIOLOGY, 2021, 94 (1124):
  • [42] Prediction of Immunohistochemistry of Suspected Thyroid Nodules by Use of Machine Learning-Based Radiomics
    Gu, Jiabing
    Zhu, Jian
    Qiu, Qingtao
    Wang, Yungang
    Bai, Tong
    Yin, Yong
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2019, 213 (06) : 1348 - 1357
  • [43] Prediction of carcinogenic human papillomavirus types in cervical cancer from multiparametric magnetic resonance images with machine learning-based radiomics models
    Ince, Okan
    Uysal, Emre
    Durak, Gorkem
    Onol, Suzan
    Yilmaz, Binnur Donmez
    Erturk, Sukru Mehmet
    Onder, Hakan
    DIAGNOSTIC AND INTERVENTIONAL RADIOLOGY, 2023, 29 (03): : 460 - 468
  • [44] Machine learning-based CT radiomics enhances bladder cancer staging predictions: A comparative study of clinical, radiomics, and combined models
    Xiong, Situ
    Fu, Zhehong
    Deng, Zhikang
    Li, Sheng
    Zhan, Xiangpeng
    Zheng, Fuchun
    Yang, Hailang
    Liu, Xiaoqiang
    Xu, Songhui
    Liu, Hao
    Fan, Bing
    Dong, Wentao
    Song, Yanping
    Fu, Bin
    MEDICAL PHYSICS, 2024, : 5965 - 5977
  • [45] Breast Cancer Prediction using Machine Learning Models
    Iparraguirre-Villanueva, Orlando
    Epifania-Huerta, Andres
    Torres-Ceclen, Carmen
    Ruiz-Alvarado, John
    Cabanillas-Carbonell, Michael
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (02) : 610 - 620
  • [46] Machine learning models in breast cancer survival prediction
    Montazeri, Mitra
    Montazeri, Mohadeseh
    Montazeri, Mahdieh
    Beigzadeh, Amin
    TECHNOLOGY AND HEALTH CARE, 2016, 24 (01) : 31 - 42
  • [47] Machine learning-based radiomics for predicting outcomes in cervical cancer patients undergoing concurrent chemoradiotherapy
    Xin W.
    Rixin S.
    Linrui L.
    Zhihui Q.
    Long L.
    Yu Z.
    Comput. Biol. Med., 2024,
  • [48] Machine Learning-Based Radiomics Predicts Radiotherapeutic Response in Patients With Acromegaly
    Fan, Yanghua
    Jiang, Shenzhong
    Hua, Min
    Feng, Shanshan
    Feng, Ming
    Wang, Renzhi
    FRONTIERS IN ENDOCRINOLOGY, 2019, 10
  • [49] Establishment of an interdisciplinary workflow of machine learning-based Radiomics in sarcoma patients
    Peeken, J. C.
    Knie, C.
    Golkov, V
    Kessel, K.
    Pasa, F.
    Khan, Q.
    Seroglazov, M.
    Kukacka, J.
    Goldberg, T.
    Richter, L.
    Reeb, J.
    Rost, B.
    Pfeiffer, F.
    Cremers, D.
    Nuesslin, F.
    Combs, S. E.
    STRAHLENTHERAPIE UND ONKOLOGIE, 2017, 193 : S174 - S174
  • [50] Machine Learning-Based Prediction of Early Recurrence in Glioblastoma Patients: A Glance Towards Precision Medicine
    Della Pepa, Giuseppe Maria
    Caccavella, Valerio Maria
    Menna, Grazia
    Ius, Tamara
    Auricchio, Anna Maria
    Sabatino, Giovanni
    La Rocca, Giuseppe
    Chiesa, Silvia
    Gaudino, Simona
    Marchese, Enrico
    Olivi, Alessandro
    NEUROSURGERY, 2021, 89 (05) : 873 - 883