Periodontal disease, especially periodontitis, is a main cause of adults losing teeth in the U.S. It usually gets worse slowly. Many things affect it, like genes, the immune system, lifestyle, and how well people keep their teeth clean. Traditional ways to check the risk and progress of periodontitis mostly use clinical exams and patient history. But these methods can’t always predict when the disease will start or get worse early enough to help.
Doctors now use data like pocket depth measurements, bleeding when probed, and X-rays. These are useful but don’t give the whole story because periodontal disease has many causes and changes over time. That makes it hard to fully customize prevention or treatment, especially early on when it matters most.
Artificial intelligence (AI) adds a new way to care for gums by using machine learning to study lots of different patient data. For example, a project funded by the Center for Innovation & Precision Dentistry at Penn Dental Medicine is working on this. Dr. Flavia Teles and Dr. Shefali Setia Verma are making a model called Multi-Layer Perceptron (MLP) that aims to better predict how periodontitis will get worse compared to old methods.
This MLP model uses molecular, clinical, and demographic data from study participants over time. It includes genetic markers, immune system info, exam records, and factors like age and lifestyle. The AI looks at all this data to find small patterns doctors might miss. Early results show the AI can predict better than logistic regression models often used in studies.
Better predictions let healthcare workers find patients who are more likely to have quick disease progression early on. They can then act faster to save teeth, avoid problems, and cut down treatment costs and difficulty.
For those who run oral health clinics in the United States, using AI models can make care better. Early detection and better risk checks can lead to:
These results help medical practice managers aim for smoother operations, good care, and lower costs.
Different AI methods help build models to predict periodontal disease. These mainly include machine learning and deep learning. Some technologies are:
All these AI tools work together to give a better look at patient data, improving prediction and customized treatment.
The Feres Laboratory at Harvard Dental School also uses AI for gum disease research. They study microbes, ecology, and immune factors together with AI. Their work includes:
Led by Dr. Magda Feres, the lab works with international teams to include health issues like diabetes and heart disease in the models. They study how these conditions affect gum treatment success, considering many health factors.
Healthcare administrators and IT workers see that AI in this area is growing to predict disease and to prepare future dentists with better tools and knowledge.
Good data is very important for AI success in gum care. The best models use info from:
Collecting high-quality, consistent data in clinics is vital. IT managers need to make sure electronic health records (EHR) and AI systems work well together. They also must work with compliance teams to keep patient data safe and follow privacy laws.
Using AI goes past just predicting disease. It also helps automate daily work in clinics, which can improve how they run. Some examples are:
Clinic owners and managers will notice that AI automation can lower costs, improve patient access, and free up staff to focus more on patient care.
Even though AI helps in many ways, some problems remain when adding AI to clinics:
Fixing these problems calls for teamwork among clinic leaders, IT staff, dental teams, and AI developers.
The future of AI in managing gum disease in the U.S. includes:
As AI gets better, investing in these areas will help clinics keep up and give good care.
In U.S. oral healthcare, using AI to improve prediction for gum disease can help reduce disease problems, make clinic work easier, and improve patient care. Using AI well needs careful fitting with current systems, training for staff, and a focus on good data and patient safety. Clinics that use these tools can give more accurate, timely, and personal care to their patients.
The CiPD-IBI Artificial Intelligence in Oral Health Innovation Award provides $25,000 in unrestricted funds for research using AI in oral-craniofacial health sciences, facilitating collaboration between the Center for Innovation & Precision Dentistry and the Penn Institute for Biomedical Informatics.
The inaugural recipients are Dr. Flavia Teles and Dr. Shefali Setia Verma, recognized for their project on using AI to predict periodontal disease progression.
The primary goal is to accelerate innovative applications of AI in oral care, from diagnostics to data integration, ultimately improving patient outcomes.
Machine learning helps discern complex relationships within molecular and clinical data, which may improve the prediction of periodontal disease progression.
Predicting disease progression is crucial as it allows for timely interventions, potentially improving patient care and reducing treatment costs.
The AI model integrates molecular (genetic, immunological), clinical, and demographic data to enhance prediction accuracy for periodontal disease.
The Multi-Layer Perceptron model exhibits greater accuracy compared to traditional logistic regression approaches, showcasing its potential for multimodal data utilization.
The research aims to address the lack of predictive methods for the initiation and progression of periodontitis, which affects millions of adults.
AI has the potential to transform dental care by providing accurate risk assessments, improving treatment approaches, and making care more affordable.
Collaboration enhances research through shared expertise and resources, accelerating the application of AI innovations in oral health care.