Routine blood biomarkers for the detection of multiple myeloma using machine learning

被引:4
|
作者
Fan, Gaowei [1 ]
Cui, Ruifang [2 ]
Zhang, Rui [1 ]
Zhang, Shunli [1 ]
Guo, Ruipeng [3 ]
Zhai, Yuhua [1 ]
Yue, Yuhong [1 ]
Wang, Qingtao [1 ]
机构
[1] Capital Med Univ, Beijing Chao Yang Hosp, Dept Clin Lab, Beijing, Peoples R China
[2] Heping Hosp, Changzhi Med Coll, Dept Clin Lab, Changzhi, Peoples R China
[3] Heping Hosp, Changzhi Med Coll, Dept Hematol, Changzhi, Peoples R China
基金
中国国家自然科学基金;
关键词
diagnosis; machine learning; multiple myeloma; routine biomarkers; BETA-2-MICROGLOBULIN; PROTEIN;
D O I
10.1111/ijlh.13806
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Introduction Primary laboratory tests performed in the diagnosis of multiple myeloma (MM) include bone marrow examination and free light chain assay; however, these may only be ordered after clinical suspicion of disease. In contrast, routine blood test results are readily available. Methods Machine learning algorithms (ML) combined with routine blood tests were used to detect MM. Feature selection was performed to achieve improved classification performance. The robustness of the classification models was assessed in an internal and external validation data set. To minimize the divergence, the training and validation data sets were combined and used to assess the performance of the ML algorithms. Results The AdaBoost-DecisionTable produced the best performance (accuracy =94.75%, sensitivity =87.70%, positive predictive value (PPV) =92.50%, F-measure =90.00%, and areas under the receiver operating characteristic curves (AUC) =97.50%) in the training data set using a 10-fold cross-validation. Performance in the validation data sets was affected by the divergence of the data sets, with accuracy greater than 85% and AUC greater than 90% in the validation data sets. The ML algorithm achieved a high accuracy of 92.61%, high AUC (96.80%), a sensitivity value of 85.20%, a PPV value of 88.50%, and an F-measure of 86.80% in a test set that was randomly selected from the combined data set. Conclusions Combining ML and routine serum biomarkers hold a potential benefit in MM diagnosis.
引用
收藏
页码:558 / 566
页数:9
相关论文
共 50 条
  • [21] A Machine Learning Model Based on Tumor and Immune Biomarkers to Predict Undetectable MRD and Survival Outcomes in Multiple Myeloma
    Guerrero, Camila
    Puig, Noemi
    Cedena, Maria-Teresa
    Goicoechea, Ibai
    Perez, Cristina
    Garces, Juan-Jose
    Botta, Cirino
    Calasanz, Maria-Jose
    Gutierrez, Norma C.
    Martin-Ramos, Maria-Luisa
    Oriol, Albert
    Rios, Rafael
    Hernandez, Miguel-Teodoro
    Martinez-Martinez, Rafael
    Bargay, Joan
    de Arriba, Felipe
    Palomera, Luis
    Gonzalez-Rodriguez, Ana Pilar
    Mosquera-Orgueira, Adrian
    Gonzalez-Perez, Marta-Sonia
    Martinez-Lopez, Joaquin
    Lahuerta, Juan-Jose
    Rosinol, Laura
    Blade, Joan
    Mateos, Maria-Victoria
    San-Miguel, Jesus F.
    Paiva, Bruno
    CLINICAL CANCER RESEARCH, 2022, 28 (12) : 2598 - 2609
  • [22] Combinatory strategy using nanoscale proteomics and machine learning for T cell subtyping in peripheral blood of single multiple myeloma patients
    Ye, Xueting
    Yang, Yun
    Zhou, Jihao
    Xu, Ling
    Wu, Long
    Huang, Peiwu
    Feng, Chun
    Ke, Peng
    He, An
    Li, Guoqiang
    Li, Yuan
    Li, Yangqiu
    Lam, Henry
    Zhang, Xinyou
    Tian, Ruijun
    ANALYTICA CHIMICA ACTA, 2021, 1173
  • [23] Evaluation of risk factors for thromboembolic events in multiple myeloma patients using multiple machine learning models
    Huang, Yi
    Liang, Haimei
    Huang, Shaoxin
    Xie, Xueli
    Deng, Bin
    Liang, Wenjie
    MEDICINE, 2025, 104 (07)
  • [24] Using Proteomics Data to Identify Personalized Treatments in Multiple Myeloma: A Machine Learning Approach
    Katsenou, Angeliki
    O'Farrell, Roisin
    Dowling, Paul
    Heckman, Caroline A.
    O'Gorman, Peter
    Bazou, Despina
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2023, 24 (21)
  • [25] BLOOD SERUM TO DIAGNOSE OSTEOARTHRITIS - BIOMARKERS AND MACHINE LEARNING
    Heard, B. J.
    Rosvold, J. M.
    Fritzler, M. J.
    El-Gabalawy, H.
    Wiley, J. P.
    Krawetz, R. J.
    OSTEOARTHRITIS AND CARTILAGE, 2014, 22 : S64 - S64
  • [26] Ultrasensitive Detection of Circulating Plasma Cells Using Surface-Enhanced Raman Spectroscopy and Machine Learning for Multiple Myeloma Monitoring
    Zhang, Dechun
    Chen, Xianling
    Lin, Jia
    Jiang, Shiyan
    Fan, Min
    Liu, Nenrong
    Huang, Zufang
    Wang, Jing
    ANALYTICAL CHEMISTRY, 2025, 97 (07) : 4101 - 4110
  • [27] Discovering Glioma Tissue through Its Biomarkers' Detection in Blood by Raman Spectroscopy and Machine Learning
    Vrazhnov, Denis
    Mankova, Anna
    Stupak, Evgeny
    Kistenev, Yury
    Shkurinov, Alexander
    Cherkasova, Olga
    PHARMACEUTICS, 2023, 15 (01)
  • [28] Identifying Blood Biomarkers for Dementia Using Machine Learning Methods in the Framingham Heart Study
    Lin, Honghuang
    Himali, Jayandra J.
    Satizabal, Claudia L.
    Beiser, Alexa S.
    Levy, Daniel
    Benjamin, Emelia J.
    Gonzales, Mitzi M.
    Ghosh, Saptaparni
    Vasan, Ramachandran S.
    Seshadri, Sudha
    McGrath, Emer R.
    CELLS, 2022, 11 (09)
  • [29] BIANCA for an automatic detection of multiple sclerosis lesions using machine learning
    Gentile, G.
    Battaglini, M.
    Luchetti, L.
    Giorgio, A.
    Griffanti, L.
    Sundaresan, V.
    Jenkinson, M.
    De Stefano, N.
    MULTIPLE SCLEROSIS JOURNAL, 2019, 25 : 681 - 681
  • [30] Machine Learning Based Phishing Attacks Detection Using Multiple Datasets
    Aljammal, Ashraf H.
    taamneh, Salah
    Qawasmeh, Ahmad
    Salameh, Hani Bani
    International Journal of Interactive Mobile Technologies, 2023, 17 (05): : 71 - 83