AI-Guided Treatment Planning in Orthodontic Patients With Missing Upper Lateral Incisors
NCT ID: NCT07133867
Last Updated: 2025-08-21
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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ACTIVE_NOT_RECRUITING
110 participants
OBSERVATIONAL
2024-03-28
2026-08-31
Brief Summary
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Detailed Description
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Artificial intelligence (AI), particularly through machine learning algorithms, has demonstrated high accuracy in other controversial orthodontic decision-making scenarios, such as extraction vs. non-extraction treatment and surgical vs. camouflage approaches. However, its application to lateral incisor agenesis treatment planning has not been thoroughly investigated.
This pilot diagnostic accuracy study will evaluate the performance of an AI-based decision support system in recommending treatment plans for cases with missing maxillary lateral incisors. A dataset of anticipated 100 cases will be compiled, consisting of pre-treatment records including intraoral and extraoral photographs, panoramic radiographs, and cephalometric analyses. two experienced orthodontists will independently review unfinished cases and make a treatment decision-space closure, space opening with prosthetic replacement, or undecided-using a standardized cutoff-points checklist. For finished cases, both pre- and post-treatment records will be analyzed.
A consensus decision will be established when at least two orthodontists agree; if disagreement persists, a third orthodontist will finalize the decision. AI predictions will be compared with orthodontists' consensus decisions to assess diagnostic accuracy, sensitivity, specificity, and agreement rates. This study aims to explore the feasibility of integrating AI tools into complex orthodontic decision-making and to establish a foundation for larger-scale clinical trials.
Conditions
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Study Design
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OTHER
RETROSPECTIVE
Eligibility Criteria
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Inclusion Criteria
* Availability of complete diagnostic records: intraoral photographs, extraoral photographs, cephalometric radiograph, and panoramic radiograph.
* Cases either finished (completed orthodontic treatment) or unfinished (under treatment).
* No prior prosthetic replacement for the missing lateral incisors before initial orthodontic planning.
Exclusion Criteria
* Cases with incomplete or poor-quality diagnostic records.
* History of previous orthodontic treatment unrelated to the current missing lateral incisor case.
* Multiple missing teeth outside the upper lateral incisor region that could affect treatment planning.
ALL
Yes
Sponsors
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Cairo University
OTHER
Responsible Party
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Malak Mohsen Ahmed Elagramy
Master's Candidate in Orthodontics" Faculty of Oral and Dental Medicine, Cairo University
Principal Investigators
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Professor (Associate)
Role: STUDY_DIRECTOR
orthodontic department-cairo university
Locations
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Faculty of Oral and Dental Medecine -Cairo University
Cairo, Manial, Egypt
Countries
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Other Identifiers
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ORTH 7-1-3
Identifier Type: -
Identifier Source: org_study_id
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