CASE STUDIES

Enhancing Dental Diagnostics Through AI- Driven Annotation and Defect Identification

Client
A leading AI-driven healthcare platform
Tools used
RadiAnt for radiograph viewing or 3D Slicer for 3D image annotation

Objective

To enhance diagnostic accuracy and efficiency in detecting dental defects, supporting improved treatment planning and patient care.

Process

  1. Used RadiAnt and 3D Slicer for precise annotations on radiographs and 3D dental images.
  2. Collaborated with dental professionals to ensure high-quality annotations for improved diagnostics.
  3. Integrated continuous learning systems to refine AI model performance over time.
  4. Applied NLP to analyze clinical notes, supporting diagnostic insights.

Challenges

  1. Radiograph Variability: Ensuring consistent interpretation of dental images.
  2. Manual Annotation: Managing the time-intensive manual annotation process.
  3. Detecting Subtle Defects: Identifying early-stage defects, such as small caries.
  4. Risk of Misdiagnosis: Reducing diagnostic errors to improve patient outcomes.

Outcome

Increased diagnostic accuracy, reduced error rates, and improved efficiency in defect identification, resulting in more precise, personalized treatment plans for patients.

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