AI interface analyzing back-of-hand and clenched-fist photos for acromegaly detection in Kobe University research, privacy-focused medical innovation.
AI interface analyzing back-of-hand and clenched-fist photos for acromegaly detection in Kobe University research, privacy-focused medical innovation.
Bilde generert av AI

Kobe University team reports AI can flag acromegaly from privacy-conscious hand photos

Bilde generert av AI
Faktasjekket

Researchers in Japan say they have developed an artificial intelligence model that can help detect acromegaly by analyzing photos of the back of the hand and a clenched fist—an approach designed to avoid using facial images or fingerprints. The team reports the system performed well in testing and could help clinicians identify potential cases earlier and refer patients for specialist evaluation.

Acromegaly is a rare endocrine disorder, usually developing in adulthood, in which the body produces too much growth hormone—most often due to a pituitary tumor. The condition can cause progressive enlargement of the hands and feet, changes in facial appearance, and broader effects on bone and organ growth.

Because symptoms often develop slowly, diagnosis can be delayed for years. “Because the condition progresses so slowly, and because it is a rare disease, it is not uncommon to take up to a decade for it to be diagnosed,” said Kobe University endocrinologist Hidenori Fukuoka.

While some research has explored using artificial intelligence to identify acromegaly from photographs, much of it has relied on facial images, which can raise privacy concerns. Seeking a less identifying alternative, the Kobe University-led group trained a deep-learning model using two types of hand photographs: an extended hand showing the back of the hand, and a clenched fist with the thumb positioned externally. The researchers said they avoided palm images because palm patterns can be used as biometric identifiers.

According to the study, 725 participants were enrolled across 15 medical facilities in Japan, contributing more than 11,000 images used to train and validate the model. The work was published in The Journal of Clinical Endocrinology & Metabolism under the title “Automatic Acromegaly Detection Using Deep Learning on Hand Images: A Multicenter Observational Study.”

The authors reported that the system achieved “very high sensitivity and specificity,” and that it outperformed experienced endocrinologists who were asked to evaluate the same photographs. Graduate student Yuka Ohmachi said she was surprised the model performed so well using only these hand views: “What struck me as particularly significant was achieving this level of performance without facial features, which makes this approach a great deal more practical for disease screening.”

The researchers emphasized that photographs alone are not sufficient for diagnosis, which typically requires clinical evaluation and hormone testing. Still, they said a screening-style tool could help prompt earlier follow-up, especially in settings where specialist access is limited. “We believe that, by further developing this technology, it could lead to creating a medical infrastructure during comprehensive health check-ups to connect suspected cases of hand-related disorders to specialists,” Fukuoka said.

The team said it plans to explore whether similar image-based methods could be adapted to help detect other conditions with visible signs in the hands, including rheumatoid arthritis, anemia and finger clubbing.

The research was funded by the Hyogo Foundation for Science Technology and involved collaborators from multiple institutions in Japan, including Fukuoka University and Nagoya University, the researchers said.

Hva folk sier

Initial reactions on X to the Kobe University AI for detecting acromegaly using hand photos are positive and limited. Users praise the privacy-conscious approach avoiding faces and fingerprints, call the findings fascinating, and highlight potential for earlier diagnosis over traditional methods. The university repository shared the peer-reviewed study.

Relaterte artikler

Illustration depicting AI cancer diagnostic tool inferring patient demographics and revealing performance biases across groups, with researchers addressing the issue.
Bilde generert av AI

AI cancer tools can infer patient demographics, raising bias concerns

Rapportert av AI Bilde generert av AI Faktasjekket

Artificial intelligence systems designed to diagnose cancer from tissue slides are learning to infer patient demographics, leading to uneven diagnostic performance across racial, gender, and age groups. Researchers at Harvard Medical School and collaborators identified the problem and developed a method that sharply reduces these disparities, underscoring the need for routine bias checks in medical AI.

Researchers have developed a deep learning model that estimates chronic stress burden by measuring adrenal gland volume on standard CT scans, introducing what they describe as the first imaging-based biomarker for chronic stress. The metric, called the Adrenal Volume Index, is linked to cortisol exposure, perceived stress, overall physiological stress load and long-term cardiovascular risk, according to findings to be presented at the Radiological Society of North America's annual meeting.

Rapportert av AI Faktasjekket

Stanford Medicine researchers and collaborators report that an artificial intelligence model called SleepFM can analyze a single overnight polysomnography study and estimate a person’s future risk for more than 100 medical conditions, including dementia, heart disease and some cancers. The team says the system learns patterns across multiple physiological signals recorded during sleep and could reveal early warning signs years before clinical diagnosis.

Researchers at the Icahn School of Medicine at Mount Sinai have developed an artificial intelligence system called V2P that not only assesses whether genetic mutations are likely to be harmful but also predicts the broad categories of disease they may cause. The approach, described in a paper in Nature Communications, is intended to accelerate genetic diagnosis and support more personalized treatment, particularly for rare and complex conditions.

Rapportert av AI

The US Department of Health and Human Services is creating a generative AI tool to analyze vaccine injury claims. The tool aims to identify patterns in a national monitoring database and generate hypotheses on vaccine side effects. Experts express concerns about its potential use under Robert F. Kennedy Jr.'s leadership.

Hospital Garrahan has developed an innovative tool that enhances the detection of rare and serious diseases. The system enables early anticipation of issues such as bone marrow failures and certain types of cancer through DNA analysis.

Rapportert av AI

Scientists at Brown University have identified a subtle brain activity pattern that can forecast Alzheimer's disease in people with mild cognitive impairment up to two and a half years in advance. Using magnetoencephalography and a custom analysis tool, the researchers detected changes in neuronal electrical signals linked to memory processing. This noninvasive approach offers a potential new biomarker for early detection.

 

 

 

Dette nettstedet bruker informasjonskapsler

Vi bruker informasjonskapsler for analyse for å forbedre nettstedet vårt. Les vår personvernerklæring for mer informasjon.
Avvis