Literature DB >> 33747150

A warning machine learning algorithm for early knee osteoarthritis structural progressor patient screening.

Hossein Bonakdari1, Afshin Jamshidi1, Jean-Pierre Pelletier1, François Abram2, Ginette Tardif1, Johanne Martel-Pelletier3.   

Abstract

AIM: In osteoarthritis (OA) there is a need for automated screening systems for early detection of structural progressors. We built a comprehensive machine learning (ML) model that bridges major OA risk factors and serum levels of adipokines/related inflammatory factors at baseline for early prediction of at-risk knee OA patient structural progressors over time.
METHODS: The patient- and gender-based model development used baseline serum levels of six adipokines, three related inflammatory factors and their ratios (36), as well as major OA risk factors [age and bone mass index (BMI)]. Subjects (677) were selected from the Osteoarthritis Initiative (OAI) progression subcohort. The probability values of being structural progressors (PVBSP) were generated using our previously published prediction model, including five baseline structural features of the knee, i.e. two X-rays and three magnetic resonance imaging variables. To identify the most important variables amongst the 47 studied in relation to PVBSP, we employed the ML feature classification methodology. Among five supervised ML algorithms, the support vector machine (SVM) demonstrated the best accuracy and use for gender-based classifiers development. Performance and sensitivity of the models were assessed. A reproducibility analysis was performed with clinical trial OA patients.
RESULTS: Feature selections revealed that the combination of age, BMI, and the ratios CRP/MCP-1 and leptin/CRP are the most important variables in predicting OA structural progressors in both genders. Classification accuracies for both genders in the testing stage (OAI) were >80%, with the highest sensitivity of CRP/MCP-1. Reproducibility analysis showed an accuracy ⩾92%; the ratio CRP/MCP-1 demonstrated the highest sensitivity in women and leptin/CRP in men.
CONCLUSION: This is the first time that such a framework was built for predicting knee OA structural progressors. Using this automated ML patient- and gender-based model, early prediction of knee structural OA progression can be performed with high accuracy using only three baseline serum biomarkers and two risk factors. PLAIN LANGUAGE
SUMMARY: Machine learning model for early knee osteoarthritis structural progression Knee osteoarthritis is a well-known debilitating disease leading to reduced mobility and quality of life - the main causes of chronic invalidity. Disease evolution can be slow and span many years; however, for some individuals, the progression/evolution can be fast. Current treatments are only symptomatic and conventional diagnosis of osteoarthritis is not very effective in early identification of patients who will progress rapidly. To improve therapeutic approaches, we need a robust prediction model to stratify osteoarthritis patients at an early stage according to risk of joint structure disease progression.We hypothesize that a prediction model using a machine learning system would enable such an early identification of individuals for whom osteoarthritis knee structure will degrade rapidly. Data were from the Osteoarthritis Initiative, a National Institute of Health (United States) databank, and the robustness and generalizability of the developed model was further evaluated using osteoarthritis patients from an external cohort. Using the supervised machine learning system (support vector machine), we developed an automated patient- and gender-based model enabling an early clinical prognosis for individuals at high risk of structural progressive osteoarthritis. In brief, this model employed at baseline (when the subject sees a physician) easily obtained features consisting of the two main osteoarthritis risk factors, age and bone mass index (BMI), in addition to the serum levels of three molecules. Two of these molecules belong to a family of factors names adipokines and one to a related inflammatory factor. In brief, the model comprising a combination of age, BMI, and the ratios CRP/MCP-1 and leptin/CRP were found very robust for both genders, and the high accuracy persists when tested with an external cohort conferring the gender-based model generalizability. This study offers a new automated system for identifying early knee osteoarthritis structural progressors, which will significantly improve clinical prognosis with real time patient monitoring.
© The Author(s), 2021.

Entities:  

Keywords:  adipokines; biomarkers; early prediction; knee osteoarthritis; machine learning; structural progressor

Year:  2021        PMID: 33747150      PMCID: PMC7905723          DOI: 10.1177/1759720X21993254

Source DB:  PubMed          Journal:  Ther Adv Musculoskelet Dis        ISSN: 1759-720X            Impact factor:   5.346


  45 in total

1.  Leptin-to-adiponectin ratio as a potential atherogenic index in obese type 2 diabetic patients.

Authors:  Noriko Satoh; Mitsuhide Naruse; Takeshi Usui; Tetsuya Tagami; Takayoshi Suganami; Kazunori Yamada; Hideshi Kuzuya; Akira Shimatsu; Yoshihiro Ogawa
Journal:  Diabetes Care       Date:  2004-10       Impact factor: 19.112

2.  Significance of C-reactive protein in osteoarthritis and total knee arthroplasty outcomes.

Authors:  Jessica W Smith; Thomas B Martins; Evelyn Gopez; Troy Johnson; Harry R Hill; Thomas D Rosenberg
Journal:  Ther Adv Musculoskelet Dis       Date:  2012-10       Impact factor: 5.346

Review 3.  Presence of comorbidities and prognosis of clinical symptoms in knee and/or hip osteoarthritis: A systematic review and meta-analysis.

Authors:  Patrick Calders; Ans Van Ginckel
Journal:  Semin Arthritis Rheum       Date:  2017-10-31       Impact factor: 5.532

4.  Mechanisms behind gender differences in circulating leptin levels.

Authors:  L Hellström; H Wahrenberg; K Hruska; S Reynisdottir; P Arner
Journal:  J Intern Med       Date:  2000-04       Impact factor: 8.989

Review 5.  Monocyte Chemoattractant Protein 1 (MCP-1) in obesity and diabetes.

Authors:  Jun Panee
Journal:  Cytokine       Date:  2012-07-04       Impact factor: 3.861

6.  Elevated high-sensitivity C-reactive protein levels are associated with local inflammatory findings in patients with osteoarthritis.

Authors:  A D Pearle; C R Scanzello; S George; L A Mandl; E F DiCarlo; M Peterson; T P Sculco; M K Crow
Journal:  Osteoarthritis Cartilage       Date:  2006-12-05       Impact factor: 6.576

7.  The association of adipokine levels in plasma and synovial fluid with the severity of knee osteoarthritis.

Authors:  Christos Staikos; Athanasios Ververidis; Georgios Drosos; Vangelis G Manolopoulos; Dionysios-Alexandros Verettas; Anna Tavridou
Journal:  Rheumatology (Oxford)       Date:  2013-02-04       Impact factor: 7.580

8.  Protective effects of licofelone, a 5-lipoxygenase and cyclo-oxygenase inhibitor, versus naproxen on cartilage loss in knee osteoarthritis: a first multicentre clinical trial using quantitative MRI.

Authors:  J-P Raynauld; J Martel-Pelletier; P Bias; S Laufer; B Haraoui; D Choquette; A D Beaulieu; F Abram; M Dorais; E Vignon; J-P Pelletier
Journal:  Ann Rheum Dis       Date:  2008-07-23       Impact factor: 19.103

Review 9.  Adipokine Contribution to the Pathogenesis of Osteoarthritis.

Authors:  Daniel Azamar-Llamas; Gabriela Hernández-Molina; Bárbara Ramos-Ávalos; Janette Furuzawa-Carballeda
Journal:  Mediators Inflamm       Date:  2017-04-08       Impact factor: 4.711

10.  Serum adipokines/related inflammatory factors and ratios as predictors of infrapatellar fat pad volume in osteoarthritis: Applying comprehensive machine learning approaches.

Authors:  Hossein Bonakdari; Ginette Tardif; François Abram; Jean-Pierre Pelletier; Johanne Martel-Pelletier
Journal:  Sci Rep       Date:  2020-06-19       Impact factor: 4.379

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  5 in total

1.  Biclustering reveals potential knee OA phenotypes in exploratory analyses: Data from the Osteoarthritis Initiative.

Authors:  Amanda E Nelson; Thomas H Keefe; Todd A Schwartz; Leigh F Callahan; Richard F Loeser; Yvonne M Golightly; Liubov Arbeeva; J S Marron
Journal:  PLoS One       Date:  2022-05-24       Impact factor: 3.752

2.  A Machine Learning Model to Predict Knee Osteoarthritis Cartilage Volume Changes over Time Using Baseline Bone Curvature.

Authors:  Hossein Bonakdari; Jean-Pierre Pelletier; François Abram; Johanne Martel-Pelletier
Journal:  Biomedicines       Date:  2022-05-26

3.  Mass spectrometry-based proteomics identify novel serum osteoarthritis biomarkers.

Authors:  Ginette Tardif; Frédéric Paré; Clarisse Gotti; Florence Roux-Dalvai; Arnaud Droit; Guangju Zhai; Guang Sun; Hassan Fahmi; Jean-Pierre Pelletier; Johanne Martel-Pelletier
Journal:  Arthritis Res Ther       Date:  2022-05-23       Impact factor: 5.606

4.  Risk factors associated with the occurrence of total knee arthroplasty in patients with knee osteoarthritis: a nested case-control study.

Authors:  Jean-Pierre Pelletier; Marc Dorais; Patrice Paiement; Jean-Pierre Raynauld; Johanne Martel-Pelletier
Journal:  Ther Adv Musculoskelet Dis       Date:  2022-04-29       Impact factor: 3.625

5.  Single nucleotide polymorphism genes and mitochondrial DNA haplogroups as biomarkers for early prediction of knee osteoarthritis structural progressors: use of supervised machine learning classifiers.

Authors:  Hossein Bonakdari; Jean-Pierre Pelletier; Francisco J Blanco; Ignacio Rego-Pérez; Alejandro Durán-Sotuela; Dawn Aitken; Graeme Jones; Flavia Cicuttini; Afshin Jamshidi; François Abram; Johanne Martel-Pelletier
Journal:  BMC Med       Date:  2022-09-12       Impact factor: 11.150

  5 in total

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