Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review

Purpose. The study explored the clinical influence, effectiveness, limitations, and human comparison outcomes of machine learning in diagnosing (1) dental diseases, (2) periodontal diseases, (3) trauma and neuralgias, (4) cysts and tumors, (5) glandular disorders, and (6) bone and temporomandibular...

Full description

Bibliographic Details
Main Authors: Taseef Hasan Farook, Nafij Bin Jamayet, Johari Yap Abdullah, Mohammad Khursheed Alam
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Pain Research and Management
Online Access:http://dx.doi.org/10.1155/2021/6659133
id doaj-1662be3d20894d9e9fa06fdf5b8d80bc
record_format Article
spelling doaj-1662be3d20894d9e9fa06fdf5b8d80bc2021-05-31T00:33:59ZengHindawi LimitedPain Research and Management1918-15232021-01-01202110.1155/2021/6659133Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic ReviewTaseef Hasan Farook0Nafij Bin Jamayet1Johari Yap Abdullah2Mohammad Khursheed Alam3Maxillofacial Prosthetic ServiceDivision of Clinical Dentistry (Prosthodontics)Craniofacial Imaging and Additive Manufacturing LaboratoryCollege of DentistryPurpose. The study explored the clinical influence, effectiveness, limitations, and human comparison outcomes of machine learning in diagnosing (1) dental diseases, (2) periodontal diseases, (3) trauma and neuralgias, (4) cysts and tumors, (5) glandular disorders, and (6) bone and temporomandibular joint as possible causes of dental and orofacial pain. Method. Scopus, PubMed, and Web of Science (all databases) were searched by 2 reviewers until 29th October 2020. Articles were screened and narratively synthesized according to PRISMA-DTA guidelines based on predefined eligibility criteria. Articles that made direct reference test comparisons to human clinicians were evaluated using the MI-CLAIM checklist. The risk of bias was assessed by JBI-DTA critical appraisal, and certainty of the evidence was evaluated using the GRADE approach. Information regarding the quantification method of dental pain and disease, the conditional characteristics of both training and test data cohort in the machine learning, diagnostic outcomes, and diagnostic test comparisons with clinicians, where applicable, were extracted. Results. 34 eligible articles were found for data synthesis, of which 8 articles made direct reference comparisons to human clinicians. 7 papers scored over 13 (out of the evaluated 15 points) in the MI-CLAIM approach with all papers scoring 5+ (out of 7) in JBI-DTA appraisals. GRADE approach revealed serious risks of bias and inconsistencies with most studies containing more positive cases than their true prevalence in order to facilitate machine learning. Patient-perceived symptoms and clinical history were generally found to be less reliable than radiographs or histology for training accurate machine learning models. A low agreement level between clinicians training the models was suggested to have a negative impact on the prediction accuracy. Reference comparisons found nonspecialized clinicians with less than 3 years of experience to be disadvantaged against trained models. Conclusion. Machine learning in dental and orofacial healthcare has shown respectable results in diagnosing diseases with symptomatic pain and with improved future iterations and can be used as a diagnostic aid in the clinics. The current review did not internally analyze the machine learning models and their respective algorithms, nor consider the confounding variables and factors responsible for shaping the orofacial disorders responsible for eliciting pain.http://dx.doi.org/10.1155/2021/6659133
collection DOAJ
language English
format Article
sources DOAJ
author Taseef Hasan Farook
Nafij Bin Jamayet
Johari Yap Abdullah
Mohammad Khursheed Alam
spellingShingle Taseef Hasan Farook
Nafij Bin Jamayet
Johari Yap Abdullah
Mohammad Khursheed Alam
Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
Pain Research and Management
author_facet Taseef Hasan Farook
Nafij Bin Jamayet
Johari Yap Abdullah
Mohammad Khursheed Alam
author_sort Taseef Hasan Farook
title Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
title_short Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
title_full Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
title_fullStr Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
title_full_unstemmed Machine Learning and Intelligent Diagnostics in Dental and Orofacial Pain Management: A Systematic Review
title_sort machine learning and intelligent diagnostics in dental and orofacial pain management: a systematic review
publisher Hindawi Limited
series Pain Research and Management
issn 1918-1523
publishDate 2021-01-01
description Purpose. The study explored the clinical influence, effectiveness, limitations, and human comparison outcomes of machine learning in diagnosing (1) dental diseases, (2) periodontal diseases, (3) trauma and neuralgias, (4) cysts and tumors, (5) glandular disorders, and (6) bone and temporomandibular joint as possible causes of dental and orofacial pain. Method. Scopus, PubMed, and Web of Science (all databases) were searched by 2 reviewers until 29th October 2020. Articles were screened and narratively synthesized according to PRISMA-DTA guidelines based on predefined eligibility criteria. Articles that made direct reference test comparisons to human clinicians were evaluated using the MI-CLAIM checklist. The risk of bias was assessed by JBI-DTA critical appraisal, and certainty of the evidence was evaluated using the GRADE approach. Information regarding the quantification method of dental pain and disease, the conditional characteristics of both training and test data cohort in the machine learning, diagnostic outcomes, and diagnostic test comparisons with clinicians, where applicable, were extracted. Results. 34 eligible articles were found for data synthesis, of which 8 articles made direct reference comparisons to human clinicians. 7 papers scored over 13 (out of the evaluated 15 points) in the MI-CLAIM approach with all papers scoring 5+ (out of 7) in JBI-DTA appraisals. GRADE approach revealed serious risks of bias and inconsistencies with most studies containing more positive cases than their true prevalence in order to facilitate machine learning. Patient-perceived symptoms and clinical history were generally found to be less reliable than radiographs or histology for training accurate machine learning models. A low agreement level between clinicians training the models was suggested to have a negative impact on the prediction accuracy. Reference comparisons found nonspecialized clinicians with less than 3 years of experience to be disadvantaged against trained models. Conclusion. Machine learning in dental and orofacial healthcare has shown respectable results in diagnosing diseases with symptomatic pain and with improved future iterations and can be used as a diagnostic aid in the clinics. The current review did not internally analyze the machine learning models and their respective algorithms, nor consider the confounding variables and factors responsible for shaping the orofacial disorders responsible for eliciting pain.
url http://dx.doi.org/10.1155/2021/6659133
work_keys_str_mv AT taseefhasanfarook machinelearningandintelligentdiagnosticsindentalandorofacialpainmanagementasystematicreview
AT nafijbinjamayet machinelearningandintelligentdiagnosticsindentalandorofacialpainmanagementasystematicreview
AT johariyapabdullah machinelearningandintelligentdiagnosticsindentalandorofacialpainmanagementasystematicreview
AT mohammadkhursheedalam machinelearningandintelligentdiagnosticsindentalandorofacialpainmanagementasystematicreview
_version_ 1721419564121587712