Health
Global Sports Events Highlight Anti-Doping Challenges Amid Health Concerns
As sports fans gear up for a thrilling weekend — with the Tour de France reaching its final stage, the Women’s EURO 2025 final set for Sunday, and the World Aquatics Championships continuing in Singapore — conversations around doping and athlete health have returned to the forefront.
Athletes competing in these elite events are under strict monitoring for performance-enhancing drugs (PEDs), with authorities adhering to the World Anti-Doping Agency’s (WADA) Prohibited List. While these substances are banned for reasons including fairness and ethical concerns, growing research is now drawing attention to their significant — and often poorly understood — health risks.
According to WADA, a substance must meet two out of three criteria to be banned: performance enhancement, actual or potential health risk, and violation of the spirit of sport. Notably, a drug doesn’t have to be proven harmful to be prohibited — the potential alone is sufficient.
One of the most extensively studied categories of PEDs is anabolic steroids, commonly used in sports that require explosive power such as sprinting or weightlifting. These drugs accelerate muscle growth by boosting protein synthesis but can have dangerous side effects. Experts warn that steroids may enlarge the heart, stiffen ventricular walls, and impair its ability to pump blood — potentially leading to long-term heart failure. Research also links steroid use to hormonal disruption and reduced brain volume in areas responsible for decision-making and emotional control.
Another common enhancer is erythropoietin (EPO), a hormone that boosts red blood cell production and improves endurance — historically used in endurance sports like cycling. EPO gained notoriety after American cyclist Lance Armstrong admitted to using it during his record-breaking career. Its misuse is associated with increased risks of blood clots, heart attacks, and strokes, though researchers caution that direct causal links remain complex and case-dependent.
Blood doping, a related method involving the reinfusion of an athlete’s own stored blood, similarly raises concerns about cardiovascular complications and infection.
Beta blockers, meanwhile, are prohibited in sports requiring calmness and precision, such as shooting and archery. While primarily used to treat heart conditions, they can reduce physical tremors and steady nerves. Side effects include dizziness and fatigue, and some studies suggest a long-term link to Parkinson’s disease, though evidence remains limited.
Despite growing awareness, experts stress that doping research is still developing. Ethical concerns make it difficult to conduct controlled studies on banned substances, and the long-term effects are further complicated when athletes combine multiple drugs.
As global tournaments shine a spotlight on peak athletic performance, anti-doping officials and researchers continue to grapple with the complex intersection of fairness, science, and athlete well-being.
Health
Novo Nordisk Teams Up With OpenAI to Accelerate Drug Discovery Using AI
Danish pharmaceutical giant Novo Nordisk has announced a new partnership with OpenAI aimed at integrating artificial intelligence across its drug development and business operations.
The collaboration, revealed on Tuesday, is expected to help the company identify new treatments more quickly and improve how medicines are developed, produced and delivered to patients. Novo Nordisk said the use of advanced AI tools will allow it to analyse vast and complex datasets, uncover patterns that were previously difficult to detect, and shorten the timeline from research to patient access.
Chief executive Mike Doustdar said the agreement marks an important step in positioning the company for the future of healthcare. He noted that millions of people living with chronic conditions such as obesity and diabetes still require better treatment options, adding that new therapies remain to be discovered.
Novo Nordisk is widely known for its leading treatments in these areas, including Ozempic and Wegovy, which have seen strong global demand in recent years. The company said integrating AI into daily workflows will allow its teams to test ideas more rapidly and bring innovations to market at a faster pace.
The partnership will not be limited to research and development. Both companies plan to apply AI tools to manufacturing processes, supply chains and commercial operations, with pilot programmes already set to begin. Full integration is expected by the end of the year.
Sam Altman said artificial intelligence is transforming industries and has the potential to significantly improve outcomes in life sciences. He added that the collaboration would support faster scientific discovery and more efficient global operations, helping to shape the future of patient care.
The move comes as pharmaceutical companies increasingly turn to AI to gain an edge in drug discovery. Novo Nordisk has already invested in innovation through initiatives such as the Danish Centre for AI Innovation, developed in partnership with Nvidia and Denmark’s export and investment fund.
Competition in the sector is intensifying. US-based Eli Lilly, a key rival in the weight-loss drug market, recently announced its own AI-focused collaboration with Insilico Medicine to develop new treatments. The agreement, valued at up to $2.75 billion, highlights the growing role of AI in reshaping pharmaceutical research.
Industry analysts say such partnerships reflect a broader shift toward data-driven innovation in healthcare, where the ability to process and interpret large volumes of information is becoming increasingly important.
For Novo Nordisk, the partnership with OpenAI signals a commitment to staying at the forefront of this transformation, as companies race to harness technology in the search for new and more effective treatments.
Health
Study Finds AI Models Fall Short in Early Medical Diagnosis
A new study has found that artificial intelligence language models still struggle with one of the most critical aspects of medical care, raising concerns about their use without human oversight.
Researchers from Mass General Brigham reported that AI systems failed to produce an appropriate early diagnosis more than 80 per cent of the time. The findings, published in JAMA Network Open, highlight ongoing limitations in how these systems reason through complex clinical scenarios.
The study examined 21 large language models, including systems developed by OpenAI, Google and xAI. Among those tested were versions of GPT, Gemini, Claude, Grok and DeepSeek.
Researchers used a structured evaluation tool known as PrIME-LLM to assess how well the models handled different stages of clinical reasoning. These stages included forming an initial diagnosis, ordering tests, reaching a final diagnosis and planning treatment. The models were tested using 29 standardised clinical scenarios, with information introduced gradually to mirror real-life patient cases.
While the systems showed relatively strong performance when identifying a final diagnosis, their ability to generate a differential diagnosis — a key step in distinguishing between conditions with similar symptoms — remained limited. This early-stage reasoning is widely regarded as essential in medical decision-making.
Marc Succi, a co-author of the study, said current models are not ready for independent clinical use. He noted that differential diagnosis represents a core part of medical practice that AI has yet to replicate effectively.
Another researcher, Arya Rao, said the findings show that AI performs best when given complete information but struggles when cases are still developing. She explained that the models are less reliable in situations where doctors must make judgments based on limited or uncertain data.
Despite these shortcomings, the study identified a group of higher-performing systems, including advanced versions of GPT, Gemini, Claude and Grok. These models achieved final diagnosis success rates ranging from around 60 per cent to over 90 per cent when provided with detailed clinical data such as lab results and imaging.
Experts not involved in the research also stressed the importance of caution. Susana Manso García said the findings reinforce that AI should not replace professional medical judgement. She advised that patients continue to seek guidance from qualified healthcare providers when dealing with health concerns.
The study concludes that while AI has made progress, it still requires close human supervision in clinical settings. Researchers say the technology shows promise as a support tool, but its current limitations mean it cannot yet be trusted to make independent medical decisions.
Health
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