Ai system spots dangerous blood cells better than doctors

A new generative AI tool called CytoDiffusion analyzes blood cells with greater accuracy than human experts, potentially improving diagnoses of diseases like leukemia. Developed by researchers from UK universities, the system detects subtle abnormalities and quantifies its own uncertainty. It was trained on over half a million images and excels at flagging rare cases for review.

Researchers from the University of Cambridge, University College London, and Queen Mary University of London have developed CytoDiffusion, a generative AI system that examines blood cell shapes and structures under a microscope. Published in Nature Machine Intelligence, the tool surpasses human specialists in identifying abnormal cells linked to blood disorders such as leukemia, offering higher sensitivity and consistency.

Unlike traditional AI that sorts images into fixed categories, CytoDiffusion models the full spectrum of normal blood cell appearances, making it robust against variations in microscopes or staining methods. It was trained on more than 500,000 blood smear images from Addenbrooke's Hospital in Cambridge, the largest dataset of its kind.

"We've all got many different types of blood cells that have different properties and different roles within our body," said Simon Deltadahl, the study's first author from Cambridge's Department of Applied Mathematics and Theoretical Physics. "White blood cells specialize in fighting infection, for example. But knowing what an unusual or diseased blood cell looks like under a microscope is an important part of diagnosing many diseases."

The system handles the vast scale of blood analysis, where smears contain thousands of cells too numerous for manual review. "Humans can't look at all the cells in a smear -- it's just not possible," Deltadahl noted. "Our model can automate that process, triage the routine cases, and highlight anything unusual for human review."

In tests, CytoDiffusion slightly outperformed humans in accuracy and stood out by reliably assessing its uncertainty. "When we tested its accuracy, the system was slightly better than humans," Deltadahl said. "But where it really stood out was in knowing when it was uncertain. Our model would never say it was certain and then be wrong, but that is something that humans sometimes do."

The AI also generates realistic synthetic blood cell images that fooled hematologists in a Turing test, with experts unable to distinguish them from real ones better than chance.

To advance global research, the team is releasing the dataset publicly. Co-senior author Professor Parashkev Nachev from UCL emphasized its supportive role: "The true value of healthcare AI lies not in approximating human expertise at lower cost, but in enabling greater diagnostic, prognostic, and prescriptive power than either experts or simple statistical models can achieve."

The researchers stress that CytoDiffusion aids clinicians rather than replacing them, with further work needed on speed and diverse populations.

관련 기사

Illustration depicting AI cancer diagnostic tool inferring patient demographics and revealing performance biases across groups, with researchers addressing the issue.
AI에 의해 생성된 이미지

AI cancer tools can infer patient demographics, raising bias concerns

AI에 의해 보고됨 AI에 의해 생성된 이미지 사실 확인됨

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.

European scientists have developed a preliminary method to identify Alzheimer's using a drop of dried blood from a finger, achieving 86% accuracy in detecting amyloid pathology. The study, validated in 337 patients from several countries, is published in Nature Medicine and aims to simplify early diagnosis of this disease affecting over 50 million people worldwide.

AI에 의해 보고됨 사실 확인됨

Researchers have developed a genomic mapping technique that reveals how thousands of genes work together to influence disease risk, helping to bridge gaps left by traditional genetic studies. The approach, described in a Nature paper led by Gladstone Institutes and Stanford University scientists, combines large-scale cell experiments with population genetics data to highlight promising targets for future therapies and deepen understanding of conditions such as blood disorders and immune-mediated diseases.

Katie Wells, founder of Wellness Mama, shares insights from her personalized health risk assessment using AI-driven tools, highlighting how lifestyle factors can significantly influence chronic disease risks. The assessment, powered by data from over 10,000 studies, showed her cancer risk below the population average despite family history. It underscores a shift toward proactive prevention over reactive medicine.

AI에 의해 보고됨

Scientists have developed an ultra-sensitive Raman imaging system that identifies cancerous tissue by detecting faint light signals from nanoparticles bound to tumor markers. This technology, far more sensitive than current tools, could accelerate cancer screening and enable earlier detection. Led by researchers at Michigan State University, the system promises to bring advanced imaging into clinical practice.

Researchers from MIT and Stanford University have developed multifunctional molecules called AbLecs to block sugar-based immune checkpoints on cancer cells. This approach aims to enhance immunotherapy by allowing immune cells to better target tumors. Early tests in cells and mice show promising results in boosting anti-tumor responses.

AI에 의해 보고됨

A Cornell University study reveals that AI tools like ChatGPT have increased researchers' paper output by up to 50%, particularly benefiting non-native English speakers. However, this surge in polished manuscripts is complicating peer review and funding decisions, as many lack substantial scientific value. The findings highlight a shift in global research dynamics and call for updated policies on AI use in academia.

 

 

 

이 웹사이트는 쿠키를 사용합니다

사이트를 개선하기 위해 분석을 위한 쿠키를 사용합니다. 자세한 내용은 개인정보 보호 정책을 읽으세요.
거부