Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis

With the advent of big data in healthcare, machine learning has rapidly gained popularity due to its potential to analyse large volumes of complex data from a variety of sources. Unsupervised learning can be used to mine data and discover patterns such as sub-groups within large patient populations....

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Główni autorzy: Pineda Moncusi, M, Strauss, VY, Robinson, DE, Prieto Alhambra, D, Khalid, S
Format: Conference item
Język:English
Wydane: SciTePress 2022
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author Pineda Moncusi, M
Strauss, VY
Robinson, DE
Prieto Alhambra, D
Khalid, S
author_facet Pineda Moncusi, M
Strauss, VY
Robinson, DE
Prieto Alhambra, D
Khalid, S
author_sort Pineda Moncusi, M
collection OXFORD
description With the advent of big data in healthcare, machine learning has rapidly gained popularity due to its potential to analyse large volumes of complex data from a variety of sources. Unsupervised learning can be used to mine data and discover patterns such as sub-groups within large patient populations. However challenges with implementation in large-scale datasets and interpretability of solutions in a real-world context remain. This work presents an application of unsupervised clustering techniques for discovering patterns of comorbidities in a large dataset of osteoarthritis patients with a view to discover interpretable and clinically-meaningful patterns.
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spelling oxford-uuid:69e304e2-4c70-4503-9e9a-8fc286cfd9de2022-03-26T18:53:55ZUnsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritisConference itemhttp://purl.org/coar/resource_type/c_5794uuid:69e304e2-4c70-4503-9e9a-8fc286cfd9deEnglishSymplectic ElementsSciTePress2022Pineda Moncusi, MStrauss, VYRobinson, DEPrieto Alhambra, DKhalid, SWith the advent of big data in healthcare, machine learning has rapidly gained popularity due to its potential to analyse large volumes of complex data from a variety of sources. Unsupervised learning can be used to mine data and discover patterns such as sub-groups within large patient populations. However challenges with implementation in large-scale datasets and interpretability of solutions in a real-world context remain. This work presents an application of unsupervised clustering techniques for discovering patterns of comorbidities in a large dataset of osteoarthritis patients with a view to discover interpretable and clinically-meaningful patterns.
spellingShingle Pineda Moncusi, M
Strauss, VY
Robinson, DE
Prieto Alhambra, D
Khalid, S
Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title_full Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title_fullStr Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title_full_unstemmed Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title_short Unsupervised learning to understand patterns of comorbidity in 633,330 patients diagnosed with osteoarthritis
title_sort unsupervised learning to understand patterns of comorbidity in 633 330 patients diagnosed with osteoarthritis
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AT straussvy unsupervisedlearningtounderstandpatternsofcomorbidityin633330patientsdiagnosedwithosteoarthritis
AT robinsonde unsupervisedlearningtounderstandpatternsofcomorbidityin633330patientsdiagnosedwithosteoarthritis
AT prietoalhambrad unsupervisedlearningtounderstandpatternsofcomorbidityin633330patientsdiagnosedwithosteoarthritis
AT khalids unsupervisedlearningtounderstandpatternsofcomorbidityin633330patientsdiagnosedwithosteoarthritis