Comparative Evaluation of Machine Learning Models for Subtyping Triple-Negative Breast Cancer: A Deep Learning-Based Multi-Omics Data Integration Approach

被引:9
作者
Yang, Shufang [1 ]
Wang, Zihu [1 ]
Wang, Changfu [1 ]
Li, Changbo [1 ]
Wang, Binjie [1 ]
机构
[1] Henan Univ, Dept Imaging, Huaihe Hosp, 1 Baobei Rd, Kaifeng 475000, Henan, Peoples R China
基金
英国科研创新办公室;
关键词
Artificial Intelligence; Deep Learning; Magnetic Resonance Imaging; Triple-Negative Breast Cancer; Multi-Omics; Prediction Model; Multi-Omics Analysis; Bayesian Optimization; THERAPY CURRENT;
D O I
10.7150/jca.93215
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Objective: Triple -negative breast cancer (TNBC) poses significant diagnostic challenges due to its aggressive nature. This research develops an innovative deep learning (DL) model based on the latest multi-omics data to enhance the accuracy of TNBC subtype and prognosis prediction. The study focuses on addressing the constraints of prior studies by showcasing a model with substantial advancements in data integration, statistical performance, and algorithmic optimization.<br /> Methods: Breast cancer -related molecular characteristic data, including mRNA, miRNA, gene mutations, DNA methylation, and magnetic resonance imaging (MRI) images, were retrieved from the TCGA and TCIA databases. This study not only compared single-omics with multi-omics machine learning models but also applied Bayesian optimization to innovatively optimize the neural network structure of a DL model for multi-omics data. Results: The DL model for multi-omics data significantly outperformed single-omics models in subtype prediction, achieving a 98.0% accuracy in cross -validation, 97.0% in the validation set, and 91.0% in an external test set. Additionally, the MRI radiomics model showed promising performance, especially with the training set; however, a decrease in performance during transfer testing underscored the advantages of the DL model for multi-omics data in data consistency and digital processing.<br /> Conclusion: Our multi-omics DL model presents notable innovations in statistical performance and transfer learning capability, bearing significant clinical relevance for TNBC classification and prognosis prediction. While the MRI radiomics model proved effective, it requires further optimization for cross-dataset application to enhance accuracy and consistency. Our findings offer new insights into improving TNBC classification and prognosis through multi-omics data and DL algorithms.
引用
收藏
页码:3943 / 3957
页数:15
相关论文
共 47 条
[1]   Machine Learning-Based Multimodel Computing for Medical Imaging for Classification and Detection of Alzheimer Disease [J].
Alghamedy, Fatemah H. H. ;
Shafiq, Muhammad ;
Liu, Lijuan ;
Yasin, Affan ;
Khan, Rehan Ali ;
Mohammed, Hussien Sobahi .
COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE, 2022, 2022
[2]   Application of Deep Learning in Breast Cancer Imaging [J].
Balkenende, Luuk ;
Teuwen, Jonas ;
Mann, Ritse M. .
SEMINARS IN NUCLEAR MEDICINE, 2022, 52 (05) :584-596
[3]   Deep learning-based system for automatic prediction of triple-negative breast cancer from ultrasound images [J].
Boulenger, Alexandre ;
Luo, Yanwen ;
Zhang, Chenhui ;
Zhao, Chenyang ;
Gao, Yuanjing ;
Xiao, Mengsu ;
Zhu, Qingli ;
Tang, Jie .
MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2023, 61 (02) :567-578
[4]   Artificial intelligence in liver ultrasound [J].
Cao, Liu-Liu ;
Peng, Mei ;
Xie, Xiang ;
Chen, Gong-Quan ;
Huang, Shu-Yan ;
Wang, Jia-Yu ;
Jiang, Fan ;
Cui, Xin-Wu ;
Dietrich, Christoph F. .
WORLD JOURNAL OF GASTROENTEROLOGY, 2022, 28 (27) :3398-3409
[5]   Advancements in MRI-Based Radiomics and Artificial Intelligence for Prostate Cancer: A Comprehensive Review and Future Prospects [J].
Chaddad, Ahmad ;
Tan, Guina ;
Liang, Xiaojuan ;
Hassan, Lama ;
Rathore, Saima ;
Desrosiers, Christian ;
Katib, Yousef ;
Niazi, Tamim .
CANCERS, 2023, 15 (15)
[6]   TEAD4 functions as a prognostic biomarker and triggers EMT via PI3K/AKT pathway in bladder cancer [J].
Chi, Ming ;
Liu, Jiao ;
Mei, Chenxue ;
Shi, Yaxing ;
Liu, Nanqi ;
Jiang, Xuefeng ;
Liu, Chang ;
Xue, Nan ;
Hong, Hong ;
Xie, Jisheng ;
Sun, Xun ;
Yin, Bo ;
Meng, Xin ;
Wang, Biao .
JOURNAL OF EXPERIMENTAL & CLINICAL CANCER RESEARCH, 2022, 41 (01)
[7]   Radiomics in breast cancer classification and prediction [J].
Conti, Allegra ;
Duggento, Andrea ;
Indovina, Iole ;
Guerrisi, Maria ;
Toschi, Nicola .
SEMINARS IN CANCER BIOLOGY, 2021, 72 :238-250
[8]   Breast cancer detection using deep learning: Datasets, methods, and challenges ahead [J].
Din, Nusrat Mohi ud ;
Dar, Rayees Ahmad ;
Rasool, Muzafar ;
Assad, Assif .
COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 149
[9]   Medical deep learning-A systematic meta-review [J].
Egger, Jan ;
Gsaxner, Christina ;
Pepe, Antonio ;
Pomykala, Kelsey L. ;
Jonske, Frederic ;
Kurz, Manuel ;
Li, Jianning ;
Kleesiek, Jens .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2022, 221
[10]   Deep learning applications in single-cell genomics and transcriptomics data analysis [J].
Erfanian, Nafiseh ;
Heydari, A. Ali ;
Feriz, Adib Miraki ;
Ianez, Pablo ;
Derakhshani, Afshin ;
Ghasemigol, Mohammad ;
Farahpour, Mohsen ;
Razavi, Seyyed Mohammad ;
Nasseri, Saeed ;
Safarpour, Hossein ;
Sahebkar, Amirhossein .
BIOMEDICINE & PHARMACOTHERAPY, 2023, 165