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AuthorMahri M.
AuthorShen N.
AuthorBerrizbeitia F.
AuthorRodan R.
AuthorDaer A.
AuthorFaigan M.
AuthorTaqi D.
AuthorWu K.Y.
AuthorAhmadi M.
AuthorDucret M.
AuthorEmami E.
AuthorTamimi F.
Available date2022-05-31T19:01:21Z
Publication Date2021
Publication NameActa Biomaterialia
ResourceScopus
Identifierhttp://dx.doi.org/10.1016/j.actbio.2020.11.011
URIhttp://hdl.handle.net/10576/31825
AbstractClinical performance of osseointegrated implants could be compromised by the medications taken by patients. The effect of a specific medication on osseointegration can be easily investigated using traditional systematic reviews. However, assessment of all known medications requires the use of evidence mapping methods. These methods allow assessment of complex questions, but they are very resource intensive when done manually. The objective of this study was to develop a machine learning algorithm to automatically map the literature assessing the effect of medications on osseointegration. Datasets of articles classified manually were used to train a machine-learning algorithm based on Support Vector Machines. The algorithm was then validated and used to screen 599,604 articles identified with an extremely sensitive search strategy. The algorithm included 281 relevant articles that described the effect of 31 different drugs on osseointegration. This approach achieved an accuracy of 95%, and compared to manual screening, it reduced the workload by 93%. The systematic mapping revealed that the treatment outcomes of osseointegrated medical devices could be influenced by drugs affecting homeostasis, inflammation, cell proliferation and bone remodeling. The effect of all known medications on the performance of osseointegrated medical devices can be assessed using evidence mappings executed with highly accurate machine learning algorithms.
Languageen
PublisherActa Materialia Inc
SubjectCell proliferation
Dental prostheses
Learning algorithms
Mapping
Support vector machines
Automated screening
Bone implant
Bone-implant contact
Clinical performance
Drug
Machine learning algorithms
Medical Devices
Osseointegration
Pharmacological agents
Systematic mapping
Diagnosis
acetylsalicylic acid
alcohol
alendronic acid
aminoguanidine
androstanolone
antibiotic agent
antihypertensive agent
aprotinin
bevacizumab
bisphosphonic acid derivative
bupivacaine
calcitonin
cannabinoid
celecoxib
cinaciguat
cisplatin
clodronic acid
cyclosporine
diclofenac
disodium diphosphonate
doxorubicin
estradiol
etidronic acid
flurbiprofen
fumagillol chloroacetylcarbamate
glucocorticoid
hydroxymethylglutaryl coenzyme A reductase inhibitor
ibandronic acid
ibuprofen
ifosfamide
incadronic acid
indometacin
insulin
levothyroxine
lithium chloride
melatonin
meloxicam
metformin
methotrexate
methylprednisolone
naproxen
nicotine
nifedipine
nonsteroid antiinflammatory agent
osteoclast differentiation factor
oxytocin
pamidronic acid
parathyroid hormone
parecoxib
prednisolone
propranolol
prostaglandin E receptor 4
prostaglandin receptor stimulating agent
protein antibody
proton pump inhibitor
raloxifene
ranibizumab
risedronic acid
rofecoxib
sclerostin
serotonin uptake inhibitor
sitagliptin
strontium ranelate
tacrolimus
trk 530
unclassified drug
vasculotropin inhibitor
vitamin D
warfarin
zoledronic acid
Article
artificial intelligence
automation
bone remodeling
cell proliferation
homeostasis
hormone substitution
human
hyperbaric oxygen therapy
inflammation
local anesthesia
machine learning
nonhuman
osseointegration
priority journal
support vector machine
treatment outcome
algorithm
artificial intelligence
machine learning
tooth implant
Algorithms
Artificial Intelligence
Dental Implants
Humans
Machine Learning
Osseointegration
Treatment Outcome
TitleOsseointegration Pharmacology: A Systematic Mapping Using Artificial Intelligence
TypeArticle
Pagination284-302
Volume Number119


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