Artificial intelligence means computer systems that can do tasks needing human thinking. In elderly care, AI can study large amounts of data from devices, apps, or telemedicine to watch health, guess risks, and help with care decisions.
For example, the Johns Hopkins Artificial Intelligence and Technology Collaboratory for Aging Research (JH AITC), started with a $20 million grant from the National Institute on Aging, supports projects using AI to address memory loss, track daily habits, and manage long-term illnesses. One project is the “Lucidity” app led by Kishore Kuchibhotla. This app gives regular thinking tests to Alzheimer’s patients and notes changes in their mental clarity. By collecting detailed data, the app helps caregivers see what causes clear moments, giving ideas to manage dementia.
Another project, Sequoia Neurovitality, uses a smart headband that gives sound signals to improve deep sleep in older adults. Deep sleep may slow down memory loss. Systems like Sovrinti use home sensors with AI to watch small behavior changes and alert care teams before problems get worse.
These projects show how AI can help elderly care but also raise questions about using the technology responsibly.
AI learns from existing data. If the data have biases, AI can repeat or even increase unfairness. This is important when caring for diverse elderly groups, including racial minorities or those who have less access to care.
Rama Chellappa says AI must face problems like data shift and bias to work well in elderly care. Data shift happens when AI sees cases in real life that are different from its training data, which can cause mistakes or unfair results. If biases are not fixed, AI might misunderstand symptoms or give wrong advice to some groups, denying fair care.
Fairness also means AI should work well for people from all backgrounds and with different thinking skills. This matters because elderly patients have different levels of health knowledge, technology use, and special needs.
Transparency means AI must explain its results clearly to healthcare workers and patients. Medical administrators and IT managers need to know how AI made a decision to check if it is correct and reliable.
The SHIFT framework, created by Haytham Siala and Yichuan Wang, points out transparency as one of five key rules for good AI. Transparent AI builds trust and responsibility. It lets doctors find mistakes and step in when needed.
But many AI systems, especially deep learning ones, work like “black boxes,” giving answers without clear reasons. Healthcare groups in the U.S. must choose or create AI that can be understood so patient care stays safe and trustworthy.
Privacy is very important in AI used for elderly care because private health data is often collected and studied. Patients and families expect their information to be kept secret and under their control.
AI builders and healthcare providers must use strong privacy tools. These include encrypting data, removing identifying details, and storing information safely. They must follow rules like HIPAA in the U.S.
Privacy worries can affect how people accept AI. Studies show tension between using technology and respecting patient rights. People will only agree to AI if privacy protections are clear and strong.
For medical administrators and IT managers, SHIFT offers a clear way to judge AI tools before using them in healthcare. Following these rules helps keep AI in elderly care ethical and protects patient rights in the U.S.
One useful way AI helps elderly care is by automating front-office and clinical work. Companies like Simbo AI use AI to answer phones and handle calls. This can help medical offices that care for older adults.
The front office is where patients and caregivers first get help. Managing appointments, questions, and communication can take a lot of time and sometimes cause mistakes or delays. This affects how patients feel about their care.
AI phone systems can answer common calls, sort requests, and send reminders. This is very helpful in elderly care because patients or families may need clear and quick communication.
Automated answering services can:
Besides front-office help, AI assists clinical work by studying patient data to warn doctors about health risks or changes. For example, Sovrinti’s sensors watch seniors’ daily activities and send early alerts when health drops. This helps care teams act early and may lower hospital visits.
Platforms like Visilant use AI to check for cataracts remotely and manage follow-up care. They link different care providers and make sure treatment continues smoothly.
Using AI with workflow automation and ethical rules helps elderly care centers work better and give good care without breaking privacy or fairness.
These ethical issues grow more important as AI technology advances and the elderly population gets bigger in the U.S. About 6.5 million Americans live with Alzheimer’s disease, showing how big caregiving needs are.
The Johns Hopkins Artificial Intelligence and Technology Collaboratory for Aging Research (JH AITC) shows how federal support helps ethical AI innovation. Since starting in 2021, it has given almost $3 million to 14 projects that improve elderly health with AI. These projects cover many needs, from cognitive health apps like Lucidity to new sleep treatments and home sensor systems.
Leaders at JH AITC stress the need to combine engineering with clinical care and include fairness and transparency in AI tools.
Healthcare leaders in the U.S. face tough choices when adding AI in elderly care. Key steps include:
By carefully using AI with respect for ethics, healthcare groups can improve care for older adults and protect their rights and dignity.
AI in elderly care is growing fast. It needs careful use that focuses on fairness, openness, inclusion, and privacy. By doing this, healthcare providers can make sure AI tools help meet the real needs of older adults across the United States.
The JH AITC focuses on using artificial intelligence to improve the long-term health and independence of older adults through innovative research and cross-disciplinary collaboration.
Lucidity helps caregivers administer cognitive tests and records patients’ conditions, capturing health data to identify factors influencing cognitive fluctuations and potentially predict moments of lucidity.
Studying cognitive fluctuations can uncover environmental or internal factors affecting cognition, providing insights that could inform therapeutic strategies to enhance clarity moments in patients.
Nearly $3 million is allocated for the first round of awards to support diverse research projects aimed at improving senior healthcare.
Funded projects include a virtual reality platform to reduce isolation, an AI-powered device for balance improvement, and algorithms for screening age-related ailments like cataracts.
The Sequoia Neurovitality project aims to enhance deep sleep through acoustic stimulation to slow cognitive decline in older adults, addressing a known risk factor for cognitive deterioration.
Sovrinti uses home sensors to detect subtle behavior changes in seniors, allowing care teams to intervene before situations become critical, thereby preventing costly escalations.
Visilant is a telemedicine platform for screening cataracts and connecting patients to treatment facilities, facilitating comprehensive management of post-operative care.
The collaboration aims to develop machine learning models that analyze cognitive performance tests given by virtual voice assistants, offering accurate predictions of cognitive status in older adults.
AI algorithms tackle challenges like data bias, interpretability, small data learning, and privacy-preserving learning, ensuring ethical and effective applications in elderly care.