Machine Learning Prediction of Collagen Fiber Orientation and Proteoglycan Content From Multiparametric Quantitative MRI in Articular Cartilage

被引:7
|
作者
Mirmojarabian, Sayed Amir [1 ]
Kajabi, Abdul Wahed [1 ]
Ketola, Juuso H. J. [1 ]
Nykanen, Olli [2 ]
Liimatainen, Timo [1 ,3 ]
Nieminen, Miika T. [1 ,3 ,4 ,5 ]
Nissi, Mikko J. [1 ,2 ]
Casula, Victor [1 ,4 ,5 ]
机构
[1] Univ Oulu, Res Unit Med Imaging Phys & Technol, Oulu, Finland
[2] Univ Eastern Finland, Dept Appl Phys, Kuopio, Finland
[3] Oulu Univ Hosp, Dept Diagnost Radiol, Oulu, Finland
[4] Univ Oulu, Med Res Ctr, Oulu, Finland
[5] Oulu Univ Hosp, Oulu, Finland
基金
芬兰科学院;
关键词
quantitative MRI; proteoglycan content; collagen fiber angle; machine learning regression; nested cross-validation; articular cartilage; T-2; RELAXATION; OSTEOARTHRITIS; DEGENERATION; T-1-RHO; T-2-RHO;
D O I
10.1002/jmri.28353
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background Machine learning models trained with multiparametric quantitative MRIs (qMRIs) have the potential to provide valuable information about the structural composition of articular cartilage. Purpose To study the performance and feasibility of machine learning models combined with qMRIs for noninvasive assessment of collagen fiber orientation and proteoglycan content. Study Type Retrospective, animal model. Animal Model An open-source single slice MRI dataset obtained from 20 samples of 10 Shetland ponies (seven with surgically induced cartilage lesions followed by treatment and three healthy controls) yielded to 1600 data points, including 10% for test and 90% for train validation. Field Strength/Sequence A 9.4 T MRI scanner/qMRI sequences: T-1, T-2, adiabatic T-1 rho and T-2 rho, continuous-wave T-1 rho and relaxation along a fictitious field (T-RAFF) maps. Assessment Five machine learning regression models were developed: random forest (RF), support vector regression (SVR), gradient boosting (GB), multilayer perceptron (MLP), and Gaussian process regression (GPR). A nested cross-validation was used for performance evaluation. For reference, proteoglycan content and collagen fiber orientation were determined by quantitative histology from digital densitometry (DD) and polarized light microscopy (PLM), respectively. Statistical Tests Normality was tested using Shapiro-Wilk test, and association between predicted and measured values was evaluated using Spearman's Rho test. A P-value of 0.05 was considered as the limit of statistical significance. Results Four out of the five models (RF, GB, MLP, and GPR) yielded high accuracy (R-2 = 0.68-0.75 for PLM and 0.62-0.66 for DD), and strong significant correlations between the reference measurements and predicted cartilage matrix properties (Spearman's Rho = 0.72-0.88 for PLM and 0.61-0.83 for DD). GPR algorithm had the highest accuracy (R-2 = 0.75 and 0.66) and lowest prediction-error (root mean squared [RMSE] = 1.34 and 2.55) for PLM and DD, respectively. Data Conclusion Multiparametric qMRIs in combination with regression models can determine cartilage compositional and structural features, with higher accuracy for collagen fiber orientation than proteoglycan content. Evidence Level 2 Technical Efficacy Stage 2
引用
收藏
页码:1056 / 1068
页数:13
相关论文
共 50 条
  • [31] Quantitative Analysis of Spatial Proteoglycan Content in Articular Cartilage With Fourier Transform Infrared Imaging Spectroscopy: Critical Evaluation of Analysis Methods and Specificity of the Parameters
    Rieppo, L.
    Saarakkala, S.
    Narhi, T.
    Holopainen, J.
    Lammi, M.
    Helminen, H. J.
    Jurvelin, J. S.
    Rieppo, J.
    MICROSCOPY RESEARCH AND TECHNIQUE, 2010, 73 (05) : 503 - 512
  • [32] ESTABLISHMENT OF NON-INVASIVE PREDICTION MODELS FOR DIAGNOSIS OF SUBTYPES AND COLLAGEN CONTENT OF UTERINE LEIOMYOMAS BY MACHINE LEARNING USING MRI DATA
    Tamehisa, Tetsuro
    Sato, Shun
    Tamura, Isao
    Sugino, Norihiro
    FERTILITY AND STERILITY, 2024, 122 (04) : E393 - E393
  • [33] Multiparametric MRI and Machine Learning Based Radiomic Models for Preoperative Prediction of Multiple Biological Characteristics in Prostate Cancer
    Fan, Xuhui
    Xie, Ni
    Chen, Jingwen
    Li, Tiewen
    Cao, Rong
    Yu, Hongwei
    He, Meijuan
    Wang, Zilin
    Wang, Yihui
    Liu, Hao
    Wang, Han
    Yin, Xiaorui
    FRONTIERS IN ONCOLOGY, 2022, 12
  • [34] Multiparametric MRI-Based Radiomics Signature with Machine Learning for Preoperative Prediction of Prognosis Stratification in Pediatric Medulloblastoma
    Luo, Yi
    Zhuang, Yijiang
    Zhang, Siqi
    Wang, Jingsheng
    Teng, Songyu
    Zeng, Hongwu
    ACADEMIC RADIOLOGY, 2024, 31 (04) : 1629 - 1642
  • [35] Prediction Model of Hemorrhage Transformation in Patient with Acute Ischemic Stroke Based on Multiparametric MRI Radiomics and Machine Learning
    Meng, Yucong
    Wang, Haoran
    Wu, Chuanfu
    Liu, Xiaoyu
    Qu, Linhao
    Shi, Yonghong
    BRAIN SCIENCES, 2022, 12 (07)
  • [36] T2 relaxation reveals spatial collagen architecture in articular cartilage:: A comparative quantitative MRI and polarized light microscopic study
    Nieminen, MT
    Rieppo, J
    Töyräs, J
    Hakumäki, JM
    Silvennoinen, J
    Hyttinen, MM
    Helminen, HJ
    Jurvelin, JS
    MAGNETIC RESONANCE IN MEDICINE, 2001, 46 (03) : 487 - 493
  • [37] Preoperative Prediction of Microsatellite Instability in Rectal Cancer Using Five Machine Learning Algorithms Based on Multiparametric MRI Radiomics
    Zhang, Yang
    Liu, Jing
    Wu, Cuiyun
    Peng, Jiaxuan
    Wei, Yuguo
    Cui, Sijia
    DIAGNOSTICS, 2023, 13 (02)
  • [38] Machine Learning and Multiparametric Brain MRI to Differentiate Hereditary Diffuse Leukodystrophy with Spheroids from Multiple Sclerosis
    Mangeat, Gabriel
    Ouellette, Russell
    Wabartha, Maxime
    De Leener, Benjamin
    Platten, Michael
    Karrenbauer, Virginija Danylaite
    Warntjes, Marcel
    Stikov, Nikola
    Mainero, Caterina
    Cohen-Adad, Julien
    Granberg, Tobias
    JOURNAL OF NEUROIMAGING, 2020, 30 (05) : 674 - 682
  • [39] A machine learning pipeline for quantitative phenotype prediction from genotype data
    Giorgio Guzzetta
    Giuseppe Jurman
    Cesare Furlanello
    BMC Bioinformatics, 11
  • [40] A machine learning pipeline for quantitative phenotype prediction from genotype data
    Guzzetta, Giorgio
    Jurman, Giuseppe
    Furlanello, Cesare
    BMC BIOINFORMATICS, 2010, 11