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| Main Authors: | , , , , , , , , , , , , , , , , |
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| Format: | Preprint |
| Published: |
2025
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| Subjects: | |
| Online Access: | https://arxiv.org/abs/2502.06842 |
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| _version_ | 1866918261526888448 |
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| author | Breithaupt, Andrew G. Weiner, Michael Tang, Alice Possin, Katherine L. Sirota, Marina Lah, James Levey, Allan I. Van Hentenryck, Pascal Zandehshahvar, Reza Gorno-Tempini, Marilu Luisa Giorgio, Joseph Wang, Jingshen Rauschecker, Andreas M. Rosen, Howard J. Nosheny, Rachel L. Miller, Bruce L. Pinheiro-Chagas, Pedro |
| author_facet | Breithaupt, Andrew G. Weiner, Michael Tang, Alice Possin, Katherine L. Sirota, Marina Lah, James Levey, Allan I. Van Hentenryck, Pascal Zandehshahvar, Reza Gorno-Tempini, Marilu Luisa Giorgio, Joseph Wang, Jingshen Rauschecker, Andreas M. Rosen, Howard J. Nosheny, Rachel L. Miller, Bruce L. Pinheiro-Chagas, Pedro |
| contents | United States healthcare systems are struggling to meet the growing demand for neurological care, particularly in Alzheimer's disease and related dementias (ADRD). Generative AI built on language models (LLMs) now enables agentic AI systems that can enhance clinician capabilities to approach specialist-level assessment and decision-making in ADRD care at scale. This article presents a comprehensive six-phase roadmap for responsible design and integration of such systems into ADRD care: (1) high-quality standardized data collection across modalities; (2) decision support; (3) clinical integration enhancing workflows; (4) rigorous validation and monitoring protocols; (5) continuous learning through clinical feedback; and (6) robust ethics and risk management frameworks. This human centered approach optimizes clinicians' capabilities in comprehensive data collection, interpretation of complex clinical information, and timely application of relevant medical knowledge while prioritizing patient safety, healthcare equity, and transparency. Though focused on ADRD, these principles offer broad applicability across medical specialties facing similar systemic challenges. |
| format | Preprint |
| id |
arxiv_https___arxiv_org_abs_2502_06842 |
| institution | arXiv |
| publishDate | 2025 |
| record_format | arxiv |
| spellingShingle | Agentic AI for Scaling Diagnosis and Care in Neurodegenerative Disease Breithaupt, Andrew G. Weiner, Michael Tang, Alice Possin, Katherine L. Sirota, Marina Lah, James Levey, Allan I. Van Hentenryck, Pascal Zandehshahvar, Reza Gorno-Tempini, Marilu Luisa Giorgio, Joseph Wang, Jingshen Rauschecker, Andreas M. Rosen, Howard J. Nosheny, Rachel L. Miller, Bruce L. Pinheiro-Chagas, Pedro Computers and Society Artificial Intelligence I.2.1 United States healthcare systems are struggling to meet the growing demand for neurological care, particularly in Alzheimer's disease and related dementias (ADRD). Generative AI built on language models (LLMs) now enables agentic AI systems that can enhance clinician capabilities to approach specialist-level assessment and decision-making in ADRD care at scale. This article presents a comprehensive six-phase roadmap for responsible design and integration of such systems into ADRD care: (1) high-quality standardized data collection across modalities; (2) decision support; (3) clinical integration enhancing workflows; (4) rigorous validation and monitoring protocols; (5) continuous learning through clinical feedback; and (6) robust ethics and risk management frameworks. This human centered approach optimizes clinicians' capabilities in comprehensive data collection, interpretation of complex clinical information, and timely application of relevant medical knowledge while prioritizing patient safety, healthcare equity, and transparency. Though focused on ADRD, these principles offer broad applicability across medical specialties facing similar systemic challenges. |
| title | Agentic AI for Scaling Diagnosis and Care in Neurodegenerative Disease |
| topic | Computers and Society Artificial Intelligence I.2.1 |
| url | https://arxiv.org/abs/2502.06842 |