Semi-supervised machine learning for automated species identification by collagen peptide mass fingerprinting

被引:13
|
作者
Gu, Muxin [1 ]
Buckley, Michael [2 ]
机构
[1] Univ Manchester, Fac Biol Med & Hlth, Michael Smith Bldg, Manchester M13 9PT, Lancs, England
[2] Univ Manchester, Sch Earth & Environm Sci, Manchester Inst Biotechnol, 131 Princess St, Manchester M1 7DN, Lancs, England
来源
BMC BIOINFORMATICS | 2018年 / 19卷
关键词
Collagen fingerprinting; Ancient bone identification; High-throughput species identification; Species biomarker identification; PCA; Hierarchical clustering; CLINICAL MICROBIOLOGY; BONE; PALAEOBIODIVERSITY; DIVERSITY; ENSEMBLES; BACTERIA;
D O I
10.1186/s12859-018-2221-3
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: Biomolecular methods for species identification are increasingly being utilised in the study of changing environments, both at the microscopic and macroscopic levels. High-throughput peptide mass fingerprinting has been largely applied to bacterial identification, but increasingly used to identify archaeological and palaeontological skeletal material to yield information on past environments and human-animal interaction. However, as applications move away from predominantly domesticate and the more abundant wild fauna to a much wider range of less common taxa that do not yet have genetically-derived sequence information, robust methods of species identification and biomarker selection need to be determined. Results: Here we developed a supervised machine learning algorithm for classifying the species of ancient remains based on collagen fingerprinting. The aim was to minimise requirements on prior knowledge of known species while yielding satisfactory sensitivity and specificity. The algorithm uses iterations of a modified random forest classifier with a similarity scoring system to expand its identified samples. We tested it on a set of 6805 spectra and found that a high level of accuracy can be achieved with a training set of five identified specimens per taxon. Conclusions: This method consistently achieves higher accuracy than two-dimensional principal component analysis and similar accuracy with hierarchical clustering using optimised parameters, which greatly reduces requirements for human input. Within the vertebrata, we demonstrate that this method was able to achieve the taxonomic resolution of family or sub-family level whereas the genus- or species-level identification may require manual interpretation or further experiments. In addition, it also identifies additional species biomarkers than those previously published.
引用
收藏
页数:9
相关论文
共 50 条
  • [41] Product Bundle Identification using Semi-Supervised Learning
    Tzaban, Hen
    Guy, Ido
    Greenstein-Messica, Asnat
    Dagan, Arnon
    Rokach, Lior
    Shapira, Bracha
    PROCEEDINGS OF THE 43RD INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL (SIGIR '20), 2020, : 791 - 800
  • [42] SARAA: Semi-Supervised Learning for Automated Residential Appliance Annotation
    Iwayemi, Abiodun
    Zhou, Chi
    IEEE TRANSACTIONS ON SMART GRID, 2017, 8 (02) : 779 - 786
  • [43] Identifying Student Learning Patterns with Semi-Supervised Machine Learning Models
    Matayoshi, Jeffrey
    Cosyn, Eric
    26TH INTERNATIONAL CONFERENCE ON COMPUTERS IN EDUCATION (ICCE 2018), 2018, : 11 - 20
  • [44] Semi-Supervised Learning with GANs for Device-Free Fingerprinting Indoor Localization
    Chen, Kevin M.
    Chang, Ronald Y.
    2020 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM), 2020,
  • [45] Comparing supervised and semi-supervised Machine Learning Models on Diagnosing Breast Cancer
    Al-Azzam, Nosayba
    Shatnawi, Ibrahem
    ANNALS OF MEDICINE AND SURGERY, 2021, 62 : 53 - 64
  • [46] Lagrangian Regularized Twin Extreme Learning Machine for Supervised and Semi-Supervised Classification
    Ma, Jun
    Yu, Guolin
    SYMMETRY-BASEL, 2022, 14 (06):
  • [47] Animal Species and Blood Identification with Peptide Mass Fingerprinting
    Igoh, Akihisa
    Miura, Masanobu
    Miyaishi, Satoru
    ANALYTICAL CHEMISTRY, 2024, 96 (07) : 2893 - 2899
  • [48] Mineral Prospectivity Mapping Using Semi-supervised Machine Learning
    Li, Quanke
    Chen, Guoxiong
    Wang, Detao
    MATHEMATICAL GEOSCIENCES, 2025, 57 (02) : 275 - 305
  • [49] Laplacian twin extreme learning machine for semi-supervised classification
    Li, Shuang
    Song, Shiji
    Wan, Yihe
    NEUROCOMPUTING, 2018, 321 : 17 - 27
  • [50] Adaptive Laplacian Support Vector Machine for Semi-supervised Learning
    Hu, Rongyao
    Zhang, Leyuan
    Wei, Jian
    COMPUTER JOURNAL, 2021, 64 (07): : 1005 - 1015