AI Is Transforming ALS Research and Care
AI is transforming ALS research and care by accelerating drug discovery, improving diagnostic accuracy and restoring communication for patients through brain-computer interfaces. Projects include:
- AI-Driven Communication & BCI Trials
- Cognixion (ONE Axon-R): A clinical trial (NCT06810219) launched in early 2025 in the US, testing a wearable headset that combines augmented reality (AR) and BCI with a generative AI application. It is designed to help patients with late-stage ALS communicate by interpreting brain signals, aiming for near-conversational speed.
- BrainGate2 (Implants): Researchers at Massachusetts General Hospital are using AI to decode neural activity in patients with locked-in ALS, translating brain signals into text or speech in real-time.
- AI in Trial Design and “Digital Twins”
- ProJenX (PRO-101 Trial): This Phase 1 trial for the drug prosetin uses AI-generated “digital twins” developed by Unlearn. These digital twins act as virtual placebos to enhance evaluation, allowing for a more efficient, data-driven assessment of treatment efficacy.
- VectorY Therapeutics (PIONEER-ALS): Similar to ProJenX, VectorY is using Unlearn’s AI digital twins in their Phase 1/2 study of a vectorized antibody therapy.
- NeuroSense Therapeutics (Phase III Trial): Using Machine Learning (ML) technology from PhaseV to analyze data from their Phase III ALS trial to detect biomarkers.
- AI-Discovered Drugs in Trials
- 4B Technologies (FB1006): An AI-discovered drug for ALS, developed using Insilico Medicine’s AI target identification engine (PandaOmics), finished enrollment in an investigator-initiated trial in early 2024. AI was used for target identification, patient enrollment, and efficacy assessment.
- Verge Genomics (VRG50635): Verge uses its AI-enabled “CONVERGE” platform to identify new targets and drugs. Their compound, VRG50635, a small-molecule PIKfyve inhibitor, is in Phase 1b trials.
- AI for Diagnosis and Monitoring
- Mayo Clinic (F-Wave Analysis): Researchers have developed an AI model that analyzes nerve conduction F-wave responses to detect ALS earlier and predict patient survival.
- Michigan Medicine (Blood Biomarkers): Researchers are using machine learning to identify ALS from blood samples through RNA sequencing, aiding in earlier diagnosis.
- Research Initiatives
- Answer ALS & LADDIA: A massive collaboration using AI to analyze the largest ALS data repository (Answer ALS) to discover new therapeutic targets, involving partners like GATC Health.
- ALS Network/TrialX: An AI-based Clinical Trial Finder was launched to help patients identify relevant trials based on their specific, complex, and sometimes non-standardized health data.


