Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches

Osteoporosis, arthritis, and fractures are examples of orthopedic illnesses that not only significantly impair patients’ quality of life but also complicate and raise the expense of therapy. It has been discovered in recent years that the pathophysiology of orthopedic disorders is significantly infl...

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Main Authors: Zhuce Shao, Huanshen Gao, Benlong Wang, Shenqi Zhang
Format: Article
Language:English
Published: Frontiers Media S.A. 2024-04-01
Series:Frontiers in Cellular and Infection Microbiology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fcimb.2024.1380136/full
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author Zhuce Shao
Huanshen Gao
Benlong Wang
Shenqi Zhang
author_facet Zhuce Shao
Huanshen Gao
Benlong Wang
Shenqi Zhang
author_sort Zhuce Shao
collection DOAJ
description Osteoporosis, arthritis, and fractures are examples of orthopedic illnesses that not only significantly impair patients’ quality of life but also complicate and raise the expense of therapy. It has been discovered in recent years that the pathophysiology of orthopedic disorders is significantly influenced by the microbiota. By employing machine learning and deep learning techniques to conduct a thorough analysis of the disease-causing microbiome, we can enhance our comprehension of the pathophysiology of many illnesses and expedite the creation of novel treatment approaches. Today’s science is undergoing a revolution because to the introduction of machine learning and deep learning technologies, and the field of biomedical research is no exception. The genesis, course, and management of orthopedic disorders are significantly influenced by pathogenic microbes. Orthopedic infection diagnosis and treatment are made more difficult by the lengthy and imprecise nature of traditional microbial detection and characterization techniques. These cutting-edge analytical techniques are offering previously unheard-of insights into the intricate relationships between orthopedic health and pathogenic microbes, opening up previously unimaginable possibilities for illness diagnosis, treatment, and prevention. The goal of biomedical research has always been to improve diagnostic and treatment methods while also gaining a deeper knowledge of the processes behind the onset and development of disease. Although traditional biomedical research methodologies have demonstrated certain limits throughout time, they nevertheless rely heavily on experimental data and expertise. This is the area in which deep learning and machine learning approaches excel. The advancements in machine learning (ML) and deep learning (DL) methodologies have enabled us to examine vast quantities of data and unveil intricate connections between microorganisms and orthopedic disorders. The importance of ML and DL in detecting, categorizing, and forecasting harmful microorganisms in orthopedic infectious illnesses is reviewed in this work.
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spelling doaj.art-625ff717d0204f61ada7133dacd01e892024-04-03T04:28:34ZengFrontiers Media S.A.Frontiers in Cellular and Infection Microbiology2235-29882024-04-011410.3389/fcimb.2024.13801361380136Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approachesZhuce ShaoHuanshen GaoBenlong WangShenqi ZhangOsteoporosis, arthritis, and fractures are examples of orthopedic illnesses that not only significantly impair patients’ quality of life but also complicate and raise the expense of therapy. It has been discovered in recent years that the pathophysiology of orthopedic disorders is significantly influenced by the microbiota. By employing machine learning and deep learning techniques to conduct a thorough analysis of the disease-causing microbiome, we can enhance our comprehension of the pathophysiology of many illnesses and expedite the creation of novel treatment approaches. Today’s science is undergoing a revolution because to the introduction of machine learning and deep learning technologies, and the field of biomedical research is no exception. The genesis, course, and management of orthopedic disorders are significantly influenced by pathogenic microbes. Orthopedic infection diagnosis and treatment are made more difficult by the lengthy and imprecise nature of traditional microbial detection and characterization techniques. These cutting-edge analytical techniques are offering previously unheard-of insights into the intricate relationships between orthopedic health and pathogenic microbes, opening up previously unimaginable possibilities for illness diagnosis, treatment, and prevention. The goal of biomedical research has always been to improve diagnostic and treatment methods while also gaining a deeper knowledge of the processes behind the onset and development of disease. Although traditional biomedical research methodologies have demonstrated certain limits throughout time, they nevertheless rely heavily on experimental data and expertise. This is the area in which deep learning and machine learning approaches excel. The advancements in machine learning (ML) and deep learning (DL) methodologies have enabled us to examine vast quantities of data and unveil intricate connections between microorganisms and orthopedic disorders. The importance of ML and DL in detecting, categorizing, and forecasting harmful microorganisms in orthopedic infectious illnesses is reviewed in this work.https://www.frontiersin.org/articles/10.3389/fcimb.2024.1380136/fullpathogenic microbiomeorthopedicmachine learningdeep learningapplicationsindividuation
spellingShingle Zhuce Shao
Huanshen Gao
Benlong Wang
Shenqi Zhang
Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
Frontiers in Cellular and Infection Microbiology
pathogenic microbiome
orthopedic
machine learning
deep learning
applications
individuation
title Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
title_full Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
title_fullStr Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
title_full_unstemmed Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
title_short Exploring the impact of pathogenic microbiome in orthopedic diseases: machine learning and deep learning approaches
title_sort exploring the impact of pathogenic microbiome in orthopedic diseases machine learning and deep learning approaches
topic pathogenic microbiome
orthopedic
machine learning
deep learning
applications
individuation
url https://www.frontiersin.org/articles/10.3389/fcimb.2024.1380136/full
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AT huanshengao exploringtheimpactofpathogenicmicrobiomeinorthopedicdiseasesmachinelearninganddeeplearningapproaches
AT benlongwang exploringtheimpactofpathogenicmicrobiomeinorthopedicdiseasesmachinelearninganddeeplearningapproaches
AT shenqizhang exploringtheimpactofpathogenicmicrobiomeinorthopedicdiseasesmachinelearninganddeeplearningapproaches