Faecal microbiome-based machine learning for multi-class disease diagnosis

被引:0
|
作者
Qi Su
Qin Liu
Raphaela Iris Lau
Jingwan Zhang
Zhilu Xu
Yun Kit Yeoh
Thomas W. H. Leung
Whitney Tang
Lin Zhang
Jessie Q. Y. Liang
Yuk Kam Yau
Jiaying Zheng
Chengyu Liu
Mengjing Zhang
Chun Pan Cheung
Jessica Y. L. Ching
Hein M. Tun
Jun Yu
Francis K. L. Chan
Siew C. Ng
机构
[1] Microbiota I-Center (MagIC),Department of Medicine and Therapeutics
[2] The Chinese University of Hong Kong,Li Ka Shing Institute of Health Sciences, State Key Laboratory of Digestive Disease, Institute of Digestive Disease
[3] The Chinese University of Hong Kong,Center for Gut Microbiota Research
[4] Faculty of Medicine,JC School of Public Health and Primary Care
[5] The Chinese University of Hong Kong,undefined
[6] The Chinese University of Hong Kong,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Systemic characterisation of the human faecal microbiome provides the opportunity to develop non-invasive approaches in the diagnosis of a major human disease. However, shared microbial signatures across different diseases make accurate diagnosis challenging in single-disease models. Herein, we present a machine-learning multi-class model using faecal metagenomic dataset of 2,320 individuals with nine well-characterised phenotypes, including colorectal cancer, colorectal adenomas, Crohn’s disease, ulcerative colitis, irritable bowel syndrome, obesity, cardiovascular disease, post-acute COVID-19 syndrome and healthy individuals. Our processed data covers 325 microbial species derived from 14.3 terabytes of sequence. The trained model achieves an area under the receiver operating characteristic curve (AUROC) of 0.90 to 0.99 (Interquartile range, IQR, 0.91–0.94) in predicting different diseases in the independent test set, with a sensitivity of 0.81 to 0.95 (IQR, 0.87–0.93) at a specificity of 0.76 to 0.98 (IQR 0.83–0.95). Metagenomic analysis from public datasets of 1,597 samples across different populations observes comparable predictions with AUROC of 0.69 to 0.91 (IQR 0.79–0.87). Correlation of the top 50 microbial species with disease phenotypes identifies 363 significant associations (FDR < 0.05). This microbiome-based multi-disease model has potential clinical application in disease diagnostics and treatment response monitoring and warrants further exploration.
引用
收藏
相关论文
共 50 条
  • [31] Investigating the Impact of Signal Resolution on Machine Learning based Multi-Class Fault Detection
    Akin, Vehbi
    Mete, Mutlu
    17TH IEEE DALLAS CIRCUITS AND SYSTEMS CONFERENCE, DCAS 2024, 2024,
  • [32] Multi-Class Support Vector Machine via Maximizing Multi-Class Margins
    Xu, Jie
    Liu, Xianglong
    Huo, Zhouyuan
    Deng, Cheng
    Nie, Feiping
    Huang, Heng
    PROCEEDINGS OF THE TWENTY-SIXTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2017, : 3154 - 3160
  • [33] Multi-class support vector machine based on the minimization of class variance
    Zhiqiang Zhang
    Zeqian Xu
    Junyan Tan
    Hui Zou
    Neural Processing Letters, 2021, 53 : 517 - 533
  • [34] Multi-class support vector machine based on the minimization of class variance
    Zhang, Zhiqiang
    Xu, Zeqian
    Tan, Junyan
    Zou, Hui
    NEURAL PROCESSING LETTERS, 2021, 53 (01) : 517 - 533
  • [35] Ordering taxa in image convolution networks improves microbiome-based machine learning accuracy
    Shtossel, Oshrit
    Isakov, Haim
    Turjeman, Sondra
    Koren, Omry
    Louzoun, Yoram
    GUT MICROBES, 2023, 15 (01)
  • [36] Learning multi-class dynamics
    Blake, A
    North, B
    Isard, M
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 11, 1999, 11 : 389 - 395
  • [37] Understanding gut microbiome-based machine learning platforms: A review on therapeutic approaches using deep learning
    Malakar, Shilpa
    Sutaoney, Priya
    Madhyastha, Harishkumar
    Shah, Kamal
    Chauhan, Nagendra Singh
    Banerjee, Paromita
    CHEMICAL BIOLOGY & DRUG DESIGN, 2024, 103 (03)
  • [38] Multi-class Weather Classification: Comparative Analysis of Machine Learning Algorithms
    Mishra, Amartya
    Roy, Ganpati Kumar
    Singla, Kanika
    ADVANCES IN DATA AND INFORMATION SCIENCES, 2022, 318 : 307 - 316
  • [39] A Multi-class Classification Approach for Weather Forecasting with Machine Learning Techniques
    Dritsas, Elias
    Trigka, Maria
    Mylonas, Phivos
    2022 17TH INTERNATIONAL WORKSHOP ON SEMANTIC AND SOCIAL MEDIA ADAPTATION & PERSONALIZATION (SMAP 2022), 2022, : 81 - 85
  • [40] Multi-class support vector machine
    Franc, V
    Hlavác, V
    16TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOL II, PROCEEDINGS, 2002, : 236 - 239