AI Model Accurately Predicts Progression of Autoimmune Disease
By LabMedica International staff writers Posted on 09 Jan 2025 |

Autoimmune diseases, where the immune system mistakenly attacks the body’s healthy cells and tissues, often have a preclinical phase characterized by mild symptoms or the presence of certain antibodies in the blood before a formal diagnosis. For example, in individuals with rheumatoid arthritis, antibodies can be found in the blood up to five years before any symptoms appear. However, in some cases, these symptoms may resolve on their own without progressing to full-blown disease. Identifying who is likely to progress along the disease path is crucial for early diagnosis, intervention, improved treatment, and better disease management. The earlier a disease is detected and treated, the better the outcome, as damage caused by autoimmune diseases can be irreversible once they advance. One of the main challenges in predicting disease progression is sample size. The number of people with a specific autoimmune disease is often small, making it harder to build an accurate model and algorithm due to limited data.
A team of researchers from Penn State College of Medicine (Hershey, PA, USA) has now developed a novel approach to predict the progression of autoimmune diseases in those with preclinical symptoms. Using artificial intelligence (AI), the team analyzed data from electronic health records and large genetic studies of people with autoimmune diseases to create a risk prediction score. This new method proved to be 25% to 1,000% more accurate than existing models in determining which individuals would progress to advanced disease. The new approach, called Genetic Progression Score (GPS), can predict the transition from preclinical to disease stages. GPS uses the concept of transfer learning, a machine learning technique where a model is trained on one dataset and then adapted for a related but different dataset. This method helps researchers extract more information from smaller data samples. For instance, in medical imaging, AI models can initially be trained to distinguish between images of cats and dogs, which are easier to label, and later refined to identify malignant versus benign tumors.
To build the training dataset, medical experts typically label images one by one, a time-consuming process that is limited by the number of images available. Transfer learning, however, uses larger, easier-to-label datasets, like pictures of cats and dogs, to create a much bigger collection. The model learns to differentiate between the animals and is then adjusted to identify malignant and benign tumors. GPS is trained on data from large case-control genome-wide association studies (GWAS), which are commonly used in human genetics research to find genetic differences between people with a specific autoimmune disease and those without. This method also integrates data from electronic health record-based biobanks, which provide valuable patient information, such as genetic variants, lab results, and clinical diagnoses. This combined data helps identify individuals in the preclinical stage of disease and track the progression from preclinical to disease states. By merging these two data sources, the GPS model is refined to include factors most relevant to the actual disease development. Those with high GPS scores are at greater risk of progressing from preclinical symptoms to full-blown disease.
The team applied their model using real-world data from the Vanderbilt University biobank to predict the progression of rheumatoid arthritis and lupus and validated the GPS risk scores with data from the All of Us biobank, an initiative from the National Institutes of Health. The results, published in Nature Communications, showed that GPS outperformed 20 other models that relied solely on biobank or case-control data, as well as those that combined both using other methods. Accurate prediction of disease progression with GPS could lead to early interventions, targeted monitoring, and personalized treatment decisions, ultimately improving patient outcomes. It could also enhance the design and recruitment for clinical trials by identifying those who are most likely to benefit from new therapies. While this study focused on autoimmune diseases, the researchers believe that this approach could be applied to studying other types of diseases as well.
“By targeting a more relevant population — people with family history or who are experiencing early symptoms — we can use machine learning to identify patients with the highest risk for disease and then identify suitable therapeutics that may be able to slow down the progression of the disease. It’s a lot more meaningful and actionable information,” said Dajiang Liu, distinguished professor, vice chair for research and director of artificial intelligence and biomedical informatics at the Penn State College of Medicine and co-lead author of the study.
Latest Immunology News
- Post-Treatment Blood Test Could Inform Future Cancer Therapy Decisions
- Cerebrospinal Fluid Test Predicts Dangerous Side Effect of Cancer Treatment
- New Test Measures Preterm Infant Immunity Using Only Two Drops of Blood
- Simple Blood Test Could Help Choose Better Treatments for Patients with Recurrent Endometrial Cancer
- Novel Analytical Method Tracks Progression of Autoimmune Diseases
- 3D Bioprinted Gastric Cancer Model Uses Patient-Derived Tissue Fragments to Predict Drug Response
- Blood Test for Fungal Infections Could End Invasive Tissue Biopsies
- Cutting-Edge Microscopy Technology Enables Tailored Rheumatology Therapies
- New Discovery in Blood Immune Cells Paves Way for Parkinson's Disease Diagnostic Test
- AI Tool Uses Routine Blood Tests to Predict Immunotherapy Response for Various Cancers
- Blood Test Can Predict How Long Vaccine Immunity Will Last
- Microfluidic Chip-Based Device to Measure Viral Immunity
- Simple Blood Test Could Detect Drug Resistance in Ovarian Cancer Patients
- Advanced Imaging Method Maps Immune Cell Connections to Predict Cancer Patients Survival
- Computational Tool Predicts Immunotherapy Outcomes for Metastatic Breast Cancer Patients
Channels
Clinical Chemistry
view channel
Carbon Nanotubes Help Build Highly Accurate Sensors for Continuous Health Monitoring
Current sensors can measure various health indicators, such as blood glucose levels, in the body. However, there is a need to develop more accurate and sensitive sensor materials that can detect lower... Read more
Paper-Based Device Boosts HIV Test Accuracy from Dried Blood Samples
In regions where access to clinics for routine blood tests presents financial and logistical obstacles, HIV patients are increasingly able to collect and send a drop of blood using paper-based devices... Read moreMolecular Diagnostics
view channel
Simple DNA PCR-Based Lab Test to Enable Personalized Treatment of Bacterial Vaginosis
Approximately one in three women aged 14-49 in the United States will experience bacterial vaginosis (BV), a vaginal bacterial imbalance, at some point in their lives. Around 50% of BV cases do not present... Read more
Rapid Diagnostic Test to Halt Mother-To-Child Hepatitis B Transmission
Hepatitis B, an inflammation of the liver caused by the hepatitis B virus (HBV), is the second-leading infectious cause of death globally, following tuberculosis. This viral infection can result in serious... Read moreHematology
view channel
New Scoring System Predicts Risk of Developing Cancer from Common Blood Disorder
Clonal cytopenia of undetermined significance (CCUS) is a blood disorder commonly found in older adults, characterized by mutations in blood cells and a low blood count, but without any obvious cause or... Read more
Non-Invasive Prenatal Test for Fetal RhD Status Demonstrates 100% Accuracy
In the United States, approximately 15% of pregnant individuals are RhD-negative. However, in about 40% of these cases, the fetus is also RhD-negative, making the administration of RhoGAM unnecessary.... Read moreImmunology
view channel
Post-Treatment Blood Test Could Inform Future Cancer Therapy Decisions
In the ongoing advancement of personalized medicine, a new study has provided evidence supporting the use of a tool that detects cancer-derived molecules in the blood of lung cancer patients years after... Read moreCerebrospinal Fluid Test Predicts Dangerous Side Effect of Cancer Treatment
In recent years, cancer immunotherapy has emerged as a promising approach where the patient's immune system is harnessed to fight cancer. One form of immunotherapy, called CAR-T-cell therapy, involves... Read more
New Test Measures Preterm Infant Immunity Using Only Two Drops of Blood
Preterm infants are particularly vulnerable due to their organs still undergoing development, which can lead to difficulties in breathing, eating, and regulating body temperature. This is especially true... Read more
Simple Blood Test Could Help Choose Better Treatments for Patients with Recurrent Endometrial Cancer
Endometrial cancer, which develops in the lining of the uterus, is the most prevalent gynecologic cancer in the United States, affecting over 66,000 women annually. Projections indicate that in 2025, around... Read moreMicrobiology
view channel
Breakthrough Diagnostic Technology Identifies Bacterial Infections with Almost 100% Accuracy within Three Hours
Rapid and precise identification of pathogenic microbes in patient samples is essential for the effective treatment of acute infectious diseases, such as sepsis. The fluorescence in situ hybridization... Read moreInnovative ID/AST System to Help Diagnose Infectious Diseases and Combat AMR
Each year, 11 million people across the world die of sepsis out of which 1.3 million deaths are due to antibiotic-resistant bacteria. The burden of antimicrobial resistance (AMR) continues to weigh heavily,... Read more
Gastrointestinal Panel Delivers Rapid Detection of Five Common Bacterial Pathogens for Outpatient Use
Acute infectious gastroenteritis results in approximately 179 million cases each year in the United States, leading to a significant number of outpatient visits and hospitalizations. To address this, a... Read morePathology
view channel
New AI Model Predicts Gene Variants’ Effects on Specific Diseases
In recent years, artificial intelligence (AI) has greatly enhanced our ability to identify a vast number of genetic variants in increasingly larger populations. However, up to half of these variants are... Read more
Powerful AI Tool Diagnoses Coeliac Disease from Biopsy Images with Over 97% Accuracy
Coeliac disease is an autoimmune disorder triggered by the consumption of gluten, causing symptoms such as stomach cramps, diarrhea, skin rashes, weight loss, fatigue, and anemia. Due to the wide variation... Read moreTechnology
view channel
Smartphones Could Diagnose Diseases Using Infrared Scans
Rapid advancements in technology may soon make it possible for individuals to bypass invasive medical procedures by simply uploading a screenshot of their lab results from their phone directly to their doctor.... Read more
Novel Sensor Technology to Enable Early Diagnoses of Metabolic and Cardiovascular Disorders
Metabolites are critical compounds that fuel life's essential functions, playing a key role in producing energy, regulating cellular activities, and maintaining the balance of bodily systems.... Read more
3D Printing Breakthrough Enables Large Scale Development of Tiny Microfluidic Devices
Microfluidic devices are diagnostic systems capable of analyzing small volumes of materials with precision and speed. These devices are used in a variety of applications, including cancer cell analysis,... Read moreIndustry
view channel
Philips and Ibex Expand Partnership to Enhance AI-Enabled Pathology Workflows
Royal Philips (Amsterdam, The Netherlands) has expanded its partnership with Ibex Medical Analytics (Tel Aviv, Israel) and released the new Philips IntelliSite Pathology Solution (PIPS) to further accelerate... Read more
Grifols and Inpeco Partner to Deliver Transfusion Medicine ‘Lab of The Future’
Grifols (Barcelona, Spain), a manufacturer of plasma-derived medicines and innovative diagnostic solutions, has entered into a strategic agreement with Inpeco (Novazzano, Switzerland), a global leader... Read more