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Artificial Intelligence Versus Clinical Examination in White Spot Lesions Detection, Identification, And Scoring

2026년 6월 8일 업데이트: Mohamed Hisham Abd ElFattah Gabr Ali, Cairo University

Diagnostic Accuracy of Artificial Intelligence Analysis Using Intraoral Photographs Versus Clinical Examination in White Spot Lesions Detection, Identification, And Scoring.

The goal of this observational study is to compare the diagnostic accuracy of Clinical examination as a standard for detection, identification and scoring of White Spot Lesions Versus Artificial intelligence analysis of intraoral photographs. The photographs are examined by experienced dental professionals to maintain diagnostic accuracy. Machine learning models YOLO and Mask-RCNN will analyze these images in three phases: pre-analytical, analytical and post-analytical. A dataset of 329 labelled photographs, annotated by experts, is used to train these models. Data augmentation methods enhance model performance, and accuracy is assessed against clinical examination results to confirm reliability.

The main question it aims to answer is:

- Is artificial intelligence analysis of intraoral photographs as accurate as clinical assessment in the detection, identification, and scoring of white spot lesions among adult Egyptian patients attending Cairo University Dental Hospital?

연구 개요

상세 설명

Dentists frequently encounter various dental hard tissue anomalies that present both diagnostic challenges and require careful treatment planning. A common example is white spot lesions or whitish discolorations of the teeth that can arise from multiple etiologies. These may be carious in nature, such as post-orthodontic incipient caries, or represent developmental defects like dental fluorosis or molar-incisor hypo-mineralization (MIH). Distinguishing between these conditions is essential for appropriate clinical management. The diagnosis of WSLs primarily relies on visual and photographic examination, which evaluates the morphology, size, color, and location of the lesions. Depth assessment is particularly critical, as it serves as a key determinant in selecting the most appropriate treatment approach. Detection and scoring of WSLs can be accomplished through clinical visual inspection alone or enhanced by adjunctive diagnostic technologies, including laser fluorescence, quantitative light-induced fluorescence (QLF), and electrical impedance spectroscopy.

The clinical characteristics of WSLs can vary considerably, making differential diagnosis challenging. While specialist clinicians demonstrate high validity and reliability in distinguishing between various white spot lesions, general dental practitioners exhibit lower diagnostic accuracy. Conventional diagnostic approaches for white spot lesions often lack precision and consistency. Visual assessment presents several inherent limitations, including the potential for misclassification due to overlapping clinical presentations among different etiologies. A systematic review and meta-analysis examining the efficacy of detection methods for incipient caries reported that photographic visual inspection achieved a sensitivity of only 67% and specificity of 79%, highlighting the need for more reliable diagnostic approaches.

Recent advances in computing power, data accessibility, and processing capabilities have accelerated the development of artificial intelligence (AI) applications, transforming contemporary healthcare research. Dentistry has similarly benefited from this technological evolution, with AI demonstrating considerable potential across various clinical applications. Machine learning (ML), a subfield of AI, represents a powerful approach for computer-aided diagnostic support, with algorithms that identify patterns within datasets during training and apply this knowledge to make predictions on new data. Emerging evidence indicates that these AI advances can improve diagnostic accuracy in caries detection, thereby supporting clinicians in making more precise and reliable assessments. Dental photography, captured using devices such as DSLR cameras or intraoral cameras, serves as a valuable tool for diagnosis and treatment planning. When combined with intelligent image analysis methods, AI can automate the identification and assessment of diagnostic data from photographs, facilitating standalone diagnostic procedures that reduce subjectivity and enhance clinical decision-making. Deep CNNs can detect and distinguish entities of similar but not identical appearance when trained on sufficiently large image datasets. Employing such models as part of an integrated image-analysis software solution would enable rapid classification of existing photographic library data and improve the accuracy and reliability of clinicians' decision-making in treatment planning or referral. Emerging evidence from studies using intraoral photographs and AI algorithms demonstrates promising detection rates, with AI exhibiting high sensitivity, specificity, precision, accuracy, and reliability in diagnostic performance. AI-driven tools are designed to serve as supportive aids for clinicians, strengthening diagnostic accuracy, streamlining workflows, improving cost-efficiency, and enhancing patient care rather than replacing clinical expertise. Simplifying the diagnostic process for white spot lesions is essential to enable their timely detection at an early stage, facilitating prompt intervention and improving preventive outcomes. AI models must be validated using local data from diverse clinical settings, particularly in lower-middle-income countries, with their performance assessed through sensitivity, specificity, and accuracy measures and benchmarked against conventional diagnostic approaches. Therefore, it is crucial to develop and validate white spot lesion detection and classification models using data from Egyptian patients attending Cairo University Hospital to ensure accurate and clinically relevant results, emphasizing the potential improvements in accuracy and reliability that AI can bring to dental diagnostics.

연구 유형

관찰

등록 (추정된)

329

연락처 및 위치

이 섹션에서는 연구를 수행하는 사람들의 연락처 정보와 이 연구가 수행되는 장소에 대한 정보를 제공합니다.

연구 연락처

참여기준

연구원은 적격성 기준이라는 특정 설명에 맞는 사람을 찾습니다. 이러한 기준의 몇 가지 예는 개인의 일반적인 건강 상태 또는 이전 치료입니다.

자격 기준

공부할 수 있는 나이

  • 성인

건강한 자원 봉사자를 받아들입니다

아니

샘플링 방법

비확률 샘플

연구 인구

Patients attending the Conservative Department of Cairo University Dental Clinic, aged from 20 to 60 years, presenting with white spot lesions of teeth, showing no signs or symptoms, demonstrating co-operation, and expressing interest in participating in the study will be considered eligible. Patients with orthodontic appliances or bridgework that could impact the clinical assessment process will be excluded.

설명

Inclusion Criteria:

  1. Adult patients aged 20 - 60 years
  2. Males or Females
  3. Patients with white spot lesions of teeth 4 - Co-operative patients with interest in participation in the study

Exclusion Criteria:

  1. Patients with orthodontic appliances or bridgework that might interfere with evaluation and assessment
  2. Patients with no white spot lesions
  3. Patients with systematic diseases that might affect participation
  4. Patients refusing to sign the informed consent or not willing to be part of the study

공부 계획

이 섹션에서는 연구 설계 방법과 연구가 측정하는 내용을 포함하여 연구 계획에 대한 세부 정보를 제공합니다.

연구는 어떻게 설계됩니까?

디자인 세부사항

연구는 무엇을 측정합니까?

주요 결과 측정

결과 측정
기간
Artificial Intelligence diagnostic accuracy in White Spot Lesions Detection
기간: Baseline
Baseline

공동 작업자 및 조사자

여기에서 이 연구와 관련된 사람과 조직을 찾을 수 있습니다.

스폰서

수사관

  • 연구 책임자: Asmaa A. Mohamed Yassen, Professor of Conservative Dentistry Department, Faculty of Dentistry, Cairo University
  • 연구 책임자: Rawda Hesham Abdelaziz, Associate Professor of Conservative Dentistry Department, Faculty of Dentistry, Cairo University
  • 연구 책임자: Asmaa A. Elsayed Osman, Lecturer of Information Technology, Faculty of Computers and Artificial Intelligence, Cairo University

간행물 및 유용한 링크

연구에 대한 정보 입력을 담당하는 사람이 자발적으로 이러한 간행물을 제공합니다. 이것은 연구와 관련된 모든 것에 관한 것일 수 있습니다.

연구 기록 날짜

이 날짜는 ClinicalTrials.gov에 대한 연구 기록 및 요약 결과 제출의 진행 상황을 추적합니다. 연구 기록 및 보고된 결과는 공개 웹사이트에 게시되기 전에 특정 품질 관리 기준을 충족하는지 확인하기 위해 국립 의학 도서관(NLM)에서 검토합니다.

연구 주요 날짜

연구 시작 (추정된)

2026년 7월 1일

기본 완료 (추정된)

2027년 7월 1일

연구 완료 (추정된)

2027년 11월 1일

연구 등록 날짜

최초 제출

2026년 6월 2일

QC 기준을 충족하는 최초 제출

2026년 6월 8일

처음 게시됨 (실제)

2026년 6월 10일

연구 기록 업데이트

마지막 업데이트 게시됨 (실제)

2026년 6월 10일

QC 기준을 충족하는 마지막 업데이트 제출

2026년 6월 8일

마지막으로 확인됨

2026년 6월 1일

추가 정보

이 연구와 관련된 용어

기타 연구 ID 번호

  • AI in detecting dental caries

개별 참가자 데이터(IPD) 계획

개별 참가자 데이터(IPD)를 공유할 계획입니까?

미정

약물 및 장치 정보, 연구 문서

미국 FDA 규제 의약품 연구

아니

미국 FDA 규제 기기 제품 연구

아니

이 정보는 변경 없이 clinicaltrials.gov 웹사이트에서 직접 가져온 것입니다. 귀하의 연구 세부 정보를 변경, 제거 또는 업데이트하도록 요청하는 경우 register@clinicaltrials.gov. 문의하십시오. 변경 사항이 clinicaltrials.gov에 구현되는 즉시 저희 웹사이트에도 자동으로 업데이트됩니다. .

Artificial Intelligence models (YOLO and MASK-RCNN)에 대한 임상 시험

구독하다