[Artificial intelligence-based multimodal fusion diagnosis: advances in precision diagnosis of periodontitis].

Q4 Medicine
Z Chai, Y Li, M L You, H N Song, F Xu, A Li
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引用次数: 0

Abstract

Periodontitis is a globally prevalent inflammatory oral disease, affecting approximately 50% of the population worldwide and imposing a substantial burden on patients' health and quality of life. Early and accurate diagnosis is critical for preventing disease progression; however, conventional diagnostic approaches often rely on subjective clinical assessments, which only primarily evaluate the cumulative state of the disease, thus limiting their ability to achieve precise early detection. In recent years, the rapid advancement of artificial intelligence (AI) in medical diagnostics has demonstrated significant promise, particularly through the integration of multimodal data to enable more comprehensive information capture and analysis. Multimodal data fusion, which combines diverse inputs such as imaging, clinical parameters, and biomarkers, offers transformative potential for AI-powered periodontitis diagnostics. This innovative approach aims to overcome the limitations of traditional methods, significantly enhancing diagnostic accuracy and predictive capabilities. This manuscript reviews the primary diagnostic techniques for periodontitis, explores recent advances in AI applications within this domain, and emphasizes the potential of multimodal data in facilitating precision diagnosis. Furthermore, it provides new insights and supports for personalized treatment strategies.

基于人工智能的多模态融合诊断:牙周炎精确诊断研究进展
牙周炎是一种全球流行的炎症性口腔疾病,影响全球约50%的人口,对患者的健康和生活质量造成重大负担。早期和准确的诊断对于预防疾病进展至关重要;然而,传统的诊断方法往往依赖于主观的临床评估,仅主要评估疾病的累积状态,从而限制了其实现精确早期检测的能力。近年来,人工智能(AI)在医疗诊断领域的快速发展显示出巨大的前景,特别是通过整合多模态数据来实现更全面的信息捕获和分析。多模式数据融合结合了成像、临床参数和生物标志物等不同输入,为人工智能牙周炎诊断提供了变革性潜力。这种创新的方法旨在克服传统方法的局限性,显著提高诊断准确性和预测能力。本文回顾了牙周炎的主要诊断技术,探讨了人工智能在该领域应用的最新进展,并强调了多模态数据在促进精确诊断方面的潜力。此外,它还为个性化治疗策略提供了新的见解和支持。
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来源期刊
中华口腔医学杂志
中华口腔医学杂志 Medicine-Medicine (all)
CiteScore
0.90
自引率
0.00%
发文量
9692
期刊介绍: Founded in August 1953, Chinese Journal of Stomatology is a monthly academic journal of stomatology published publicly at home and abroad, sponsored by the Chinese Medical Association and co-sponsored by the Chinese Stomatology Association. It mainly reports the leading scientific research results and clinical diagnosis and treatment experience in the field of oral medicine, as well as the basic theoretical research that has a guiding role in oral clinical practice and is closely combined with oral clinical practice. Chinese Journal of Over the years, Stomatology has been published in Medline, Scopus database, Toxicology Abstracts Database, Chemical Abstracts Database, American Cancer database, Russian Abstracts database, China Core Journal of Science and Technology, Peking University Core Journal, CSCD and other more than 20 important journals at home and abroad Physical medicine database and retrieval system included.
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