A fully interpretable machine learning model for increasing the effectiveness of urine screening

被引:2
|
作者
Del Ben, Fabio [1 ]
Da Col, Giacomo [2 ]
Cobarzan, Doriana [2 ]
Turetta, Matteo [1 ]
Rubin, Daniela [3 ]
Buttazzi, Patrizio [3 ]
Antico, Antonio [3 ]
机构
[1] IRCCS, NCI, CRO Aviano, Aviano, Italy
[2] Fraunhofer Austria Res, KI4LIFE, Klagenfurt, Austria
[3] AULSS2 Marca Trevigiana, Treviso, Italy
关键词
urinalysis; machine learning; data science; decision tree; FLOW-CYTOMETRY; SYSMEX UF-1000I; DECISION TREES; DIAGNOSIS; CULTURE;
D O I
10.1093/ajcp/aqad099
中图分类号
R36 [病理学];
学科分类号
100104 ;
摘要
Objectives This article addresses the need for effective screening methods to identify negative urine samples before urine culture, reducing the workload, cost, and release time of results in the microbiology laboratory. We try to overcome the limitations of current solutions, which are either too simple, limiting effectiveness (1 or 2 parameters), or too complex, limiting interpretation, trust, and real-world implementation ("black box" machine learning models).Methods The study analyzed 15,312 samples from 10,534 patients with clinical features and the Sysmex Uf-1000i automated analyzer data. Decision tree (DT) models with or without lookahead strategy were used, as they offer a transparent set of logical rules that can be easily understood by medical professionals and implemented into automated analyzers.Results The best model achieved a sensitivity of 94.5% and classified negative samples based on age, bacteria, mucus, and 2 scattering parameters. The model reduced the workload by an additional 16% compared to the current procedure in the laboratory, with an estimated financial impact of euro40,000/y considering 15,000 samples/y. Identified logical rules have a scientific rationale matched to existing knowledge in the literature.Conclusions Overall, this study provides an effective and interpretable screening method for urine culture in microbiology laboratories, using data from the Sysmex UF-1000i automated analyzer. Unlike other machine learning models, our model is interpretable, generating trust and enabling real-world implementation.
引用
收藏
页码:620 / 632
页数:13
相关论文
共 50 条
  • [1] Evaluating the Effectiveness of Marketing Campaigns for Malls Using a Novel Interpretable Machine Learning Model
    Wang, Tong
    He, Cheng
    Jin, Fujie
    Hu, Yu Jeffrey
    INFORMATION SYSTEMS RESEARCH, 2022, 33 (02) : 659 - 677
  • [2] Fully interpretable deep learning model of transcriptional control
    Liu, Yi
    Barr, Kenneth
    Reinitz, John
    BIOINFORMATICS, 2020, 36 : 499 - 507
  • [3] Meta-anova: screening interactions for interpretable machine learning
    Choi, Yongchan
    Park, Seokhun
    Park, Chanmoo
    Kim, Dongha
    Kim, Yongdai
    JOURNAL OF THE KOREAN STATISTICAL SOCIETY, 2025,
  • [4] Interpretable machine learning-assisted screening of perovskite oxides
    Zhao, Jie
    Wang, Xiaoyan
    Li, Haobo
    Xu, Xiaoyong
    RSC ADVANCES, 2024, 14 (06) : 3909 - 3922
  • [5] Interpretable Machine Learning
    Chen V.
    Li J.
    Kim J.S.
    Plumb G.
    Talwalkar A.
    Queue, 2021, 19 (06): : 28 - 56
  • [6] Enhancing Cosmological Model Selection with Interpretable Machine Learning
    Ocampo, Indira
    Alestas, George
    Nesseris, Savvas
    Sapone, Domenico
    PHYSICAL REVIEW LETTERS, 2025, 134 (04)
  • [7] An interpretable machine learning model for seasonal precipitation forecasting
    Pinheiro, Enzo
    Ouarda, Taha B. M. J.
    COMMUNICATIONS EARTH & ENVIRONMENT, 2025, 6 (01):
  • [8] Interpretable machine learning to model biomass and waste gasification
    Ascher, Simon
    Wang, Xiaonan
    Watson, Ian
    Sloan, William
    You, Siming
    BIORESOURCE TECHNOLOGY, 2022, 364
  • [9] Interpretable machine learning model to detect chemically adulterated urine samples analyzed by high resolution mass spectrometry
    Streun, Gabriel L.
    Steuer, Andrea E.
    Ebert, Lars C.
    Dobay, Akos
    Kraemer, Thomas
    CLINICAL CHEMISTRY AND LABORATORY MEDICINE, 2021, 59 (08) : 1392 - 1399
  • [10] Automation of an Educational Data Mining Model Applying Interpretable Machine Learning and Auto Machine Learning
    Novillo Rangone, Gabriel
    Pizarro, Carlos
    Montejano, German
    COMMUNICATION AND SMART TECHNOLOGIES (ICOMTA 2021), 2022, 259 : 22 - 30