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Why AI in healthcare needs stringent safety protocols

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Why AI in healthcare needs stringent safety protocols


AI safety, put simply, is the practice of ensuring that AI behaves as intended, particularly in high-risk settings like medicine. Photograph used for representational purposes only
| Photo Credit: Getty Images

In 1982, a chilling tragedy in Chicago claimed seven lives after Tylenol (paracetamol) capsules were mixed with cyanide—not during manufacturing, but after reaching store shelves by unknown killer(s). Until the 1980s, products weren’t routinely sealed, and consumers could not know if items had been tampered with. The incident exposed a critical vulnerability and led to a sweeping reform: the introduction of tamper-evident sealed packaging. What was once optional became essential. Today, whether it’s food, medicine, or cosmetics, a sealed cover signifies safety. That simple seal, born from crisis, transformed into a universal symbol of trust.

We are once again at a similar crossroads. Large Language Models (LLM) like ChatGPT, Gemini, and Claude are advanced systems trained to generate human-like text. In the medical field, LLMs are increasingly being used to draft clinical summaries, explain diagnoses in simple language, generate patient instructions, and even help in decision-making processes. A recent survey found that over 65% of healthcare professionals have used LLMs, and more than half do so weekly for administrative relief or clinical insight in the United States. This integration is quick and often unregulated, especially in private settings. The success of these systems depends on the propriety Artificial Intelligence (AI) models built by companies, and the quality of training data.

How LLMs work

To put it simply, an LLM is an advanced computer programme that generates text based on patterns it has learned. It is trained using a training dataset—vast text collections from books, articles, web pages, and medical databases. These texts are broken into tokens (words or word parts), which the model digests to predict the most likely next word in a sentence. The model weights—numbers encode this learning—are adjusted during training and stored as part of the AI’s core structure. When someone queries the LLM—whether a patient asking for drug side effects or a doctor seeking help with a rare disease—the model draws from its trained knowledge and formulates a response. The model performs well if the training data is accurate and balanced.

Silent saboteur: data poisoning

Training datasets are the raw material on which LLMs are built. Some of the most widely used biomedical and general training datasets include The Pile, PubMed Central, Open Web Text, C4, Refined Web, and Slim Pajama. These contain moderated content (like academic journals and books) and unmoderated content (like web pages, GitHub posts, and online forums).

A recent study in Nature Medicine published online in January 2025, explored a deeply concerning threat: data poisoning. Unlike hacking into an AI model that requires expertise, this study intentionally created a poisonous training dataset using the OpenAI GPT-3.5-turbo API. It generated fake but convincing medical articles containing misinformation—such as anti-vaccine content or incorrect drug indications at a cost of around $1,000. The study investigated what happened if the training dataset was poisoned with misinformation. Only a tiny fraction, 0.001% (1 million per billion) of the data was misinformed. However the results revealed that it displayed a staggering 4.8% to 20% increase in medically harmful responses, depending on the size and complexity of the model (ranging from 1.3 to 4 billion parameters) during prompts.

Benchmarks are test sets that check if an AI model can answer questions correctly. In medicine, these include datasets like PubMedQA, MedQA, and MMLU, which draw on standardised exams and clinical prompts based on multiple-choice style evaluations. If a model performs well on these, it is assumed to be “safe” for deployment. They are widely used to claim LLMs perform at or above the human level. But, the Nature study revealed that poisoned models scored as well as uncorrupted ones. This means existing benchmarks may not be sensitive enough to detect underlying harm, revealing a critical blind spot about benchmarks.

Why filtering doesn’t work

LLMs are trained on billions of documents, and expecting human reviewers—such as physicians—to screen through each and every one of these is unrealistic. Automated quality filters are available to eliminate garbage content containing abusive language or sexual content. But these filters often miss syntactically elegant, misleading information—the kind a skilled propagandist or AI can produce. For example, a medically incorrect statement written in polished academic prose will likely bypass these filters entirely.

The study also revealed that even reputable sources like PubMed, part of many training sets, contains outdated or disproven medical knowledge. For instance, there are still over 3,000 articles promoting prefrontal lobotomy, a practice long discarded. So, even if a model is trained only on “trusted” data, it may still replicate obsolete treatments.

AI safety

As AI systems get embedded deeper into public health systems, insurance workflows, patient interactions, and clinical decision-making, the cost of an undetected flaw can become catastrophic. The danger isn’t only theoretical. Just as a small traffic dispute can spiral into a communal riot through social media misinformation, a single AI-generated error could be repeated at scale, affecting thousands of patients across different geographies. Non-state actors, ideologically motivated individuals, or even accidental contributors can inject misleading data into open web sources that later influence AI behaviour. This threat is silent, diffuse, and global.

This is why AI safety cannot be treated as an afterthought—it must be foundational. AI safety, put simply, is the practice of ensuring that AI behaves as intended, particularly in high-risk settings like medicine. It involves detecting, auditing, and mitigating errors in both the training phase and post-deployment use. Unlike traditional software, LLMs are probabilistic and opaque—their outputs change based on unseen variables, making their testing much harder. One of the key takeaways from the study is that benchmarks alone are not enough. While benchmarks provide standardised comparisons across models, they fail to capture contextual accuracy, bias, and real-world safety. Just because a model can ace a test doesn’t mean it can practice safe medicine.

The point is not to abandon the development of medical LLMs but to acknowledge and address their safety limitations. AI tools can aid in healthcare only if built on trusted foundations, with constant vigilance, and robust ethical guardrails. Just as the Tylenol crisis gave rise to safety caps, today’s revelations must lead to systemic safety measures for AI in medicine. Tampering with a bottle killed seven, but with a dataset, it could harm millions.

(Dr. C. Aravinda is an academic and public health physician. The views expressed are personal. aravindaaiimsjr10@hotmail.com)



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Researchers claim to have found colour no one has seen before. They name it…

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Researchers claim to have found colour no one has seen before. They name it…


Researchers in the United States have used lasers and advanced tracking technology to enable five individuals to see a colour no human has ever seen before.

The researchers have published details of the experiment in Science Advances on April 18.(Image for representation/Pexels)

The researchers claim that by stimulating individual cells in the retina, the laser pushed their perception beyond its natural limits, according to The Guardian.

The researchers, who have published details of the experiment in Science Advances on April 18, have named the new colour “olo.”

The five people on whom the experiment was conducted described the new colour as something “blue-green”, but have added that their description does not fully capture the richness of the experience.

“We predicted from the beginning that it would look like an unprecedented colour signal but we didn’t know what the brain would do with it,” Ren Ng, an electrical engineer at the University of California, Berkeley, was quoted as saying by The Guardian. “It was jaw-dropping. It’s incredibly saturated.”

Also Read | Scientists find ‘strongest evidence’ yet of life beyond our solar system

Austin Roorda, a vision scientist on the team, said that there is no way to convey the colour in an article or on a monitor.

“The whole point is that this is not the colour we see, it’s just not. The colour we see is a version of it, but it absolutely pales by comparison with the experience of olo,” Roorda said.

On a question whether the world would get the chance to experience the new colour, Ng responded that it’s not possible anytime soon.

Also Read | Scientists manage to freeze light, convert it into a solid

“This is basic science,” said Ng. “We’re not going to see olo on any smartphone displays or any TVs any time soon. And this is very, very far beyond VR headset technology.”

The experiment, however, has left some questioning.

John Barbur, a vision scientist at City, St George’s, University of London, told The Guardian that the experiment has not led to anything new and has “limited value”.

“It is not a new colour,” Barbur said. “It’s a more saturated green that can only be produced in a subject with normal red-green chromatic mechanism when the only input comes from M cones.”

Humans see colour when light hits specialised cells in the retina known as cones. There are three types of cones, each tuned to detect different wavelengths of light: long (L), medium (M), and short (S).



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50 years since the launch of Aryabhata

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50 years since the launch of Aryabhata


What is Aryabhata?

Named after an ancient Indian mathematician and astronomer (5th Century), Aryabhata was India’s first satellite. Launched from Kapustin Yar with the help of the Soviets on April 19, 1975, the launch of this indigenously-built satellite marked the beginning of India’s space age. The successful launch meant that India became just the 11th country in the world to send a satellite into orbit.

Aryabhata was designed as a 26-sided polyhedron that was 1.4 metres in diameter and weighed 360 kg. Barring the top and the bottom, each and every one of the 24 other faces were covered in solar panels.

Once in orbit, Aryabhata went around the Earth every 96.3 minutes. With an inclination of 50.7 degrees, the satellite went around in an orbit with an apogee (furthest point) of 619 km and a perigee (closest approach) of 563 km.

Tasked with conducting experiments in solar physics and X-ray astronomy, Aryabhata tasted minimal success (making observations of an X-ray source) before a power failure halted experiments after five days in orbit. In addition to providing scientists invaluable experience in building satellites, Aryabhata also collected information during its five operational days. It continued to transmit information for some more days. Aryabhata re-entered the Earth’s atmosphere on February 10, 1992 – corresponding to an orbital life of nearly 17 years.

Learning rocket science

While India’s satellite programme took shape in the 1970s, the scientists in the country had been gearing up for India’s indigenous space programme ever since the space race between Cold War rivals the U.S. and the Soviet Union had begun. In the 1960s, the Indian Space Research Organisation (ISRO) developed a series of sounding rockets for atmospheric and meteorological research under the Rohini rocket programme. Following this success, the ISRO turned their attention towards building our own satellites.

Vikram Sarabhai, physicist and ISRO’s founder, appointed a team of 25 scientists, engineers, and researchers to design and develop a satellite at the Physical Research Laboratory in Ahmedabad. Sarabhai entrusted space scientist Udupi Ramachandra Rao with the task of directing operations and assembling the satellite in Bengaluru.

Considering that Rao himself had only limited experience with regard to making a satellite, the young team that had been put together had to learn on the fly. While this is no easy task in any industry, it was probably doubly difficult in rocket science.

An employee inspects the coded information from the first Indian satellite, Aryabhata, being received at the ground telemetry receiving station at Sriharikota. The success of Aryabhata meant India also set up necessary ground station capabilities. This station, for instance, could also issue commands to the satellite to do specific functions.
| Photo Credit:
The Hindu Archives

The initial design that they came up with was for a 100 kg satellite that could be launched using the Scout launch vehicle. This reliable launch vehicle that belonged to the U.S. was seen by Indians as an affordable option.

The ongoing Cold War, however, meant that the Soviets were concerned about such a collaboration. In 1971, Indira Gandhi, India’s Prime Minister, received a message from the Indian ambassador at Moscow stating that the Soviet Academy of Sciences was willing to assist India in launching its first satellite. India decided to go the Soviet way in the end.

Rao, meanwhile, gathered his team at Peenya, an industrial area in Bengaluru that was going to serve as the site for the country’s first indigenous satellite. Four sheds in the area were repurposed into a working station, which was housed above a laboratory that was cleared out to facilitate work immediately.

What’s in a name?

With Rao and his team working on the satellite and a deal about to be struck between the Indians and the Soviets, it seemed like a matter of time before the launch date could be decided. The death of Sarabhai on December 30, 1971, however, put the entire project in jeopardy as the entire Indian space programme came to an abrupt halt.

Notwithstanding the delays in finalising details or acquiring financial backing, Rao and his team ploughed towards the finish line. This, despite the fact that they were building the satellite without naming it – a problem they wished to solve with the PM’s support.

In order to gain the PM’s backing, the scientists decided to offer Indira Gandhi three names from which she could choose one for the satellite. In addition to Aryabhata, Mitra (denoting friendly relations between India and the Soviet Union) and Jawahar (invoking the spirit of independence) were the names that were suggested. Indira Gandhi chose Aryabhata.

A success story

With the name out of the way and most of the hurdles surmounted, the satellite was set to be launched on April 19, 1975. Even though most of the leading space powers of the time didn’t expect India to make it, Aryabhata’s successful launch showcased to the world that India could build its own satellite. This template has been repeated many times in the decades that have followed, as India has established itself as a space power despite working with limited budgets.

Picture taken when U.R. Rao and his colleagues called on the President, Fakhruddin Ali Ahmed, at Rashtrapati Bhavan in New Delhi on May 24, 1975. Photo shows Rao presenting a photograph of the Aryabhata satellite.

Picture taken when U.R. Rao and his colleagues called on the President, Fakhruddin Ali Ahmed, at Rashtrapati Bhavan in New Delhi on May 24, 1975. Photo shows Rao presenting a photograph of the Aryabhata satellite.
| Photo Credit:
The Hindu Archives

The success was immediately celebrated, both in the country and elsewhere. On April 20, 1975, The Hindu splashed the headline “India Enters Space Age: Satellite Put into Orbit” in its front pages across the country. Within hours of the successful launch, the Posts and Telegraphs Department announced the issue of a special stamp to mark the historic milestone – a first in itself. The Soviets too released a stamp featuring Aryabhata the following year, as a sign of the friendly collaboration between the two nations.

Even though Aryabhata collected data for less than five days, it serves as a success story as it showed that the country’s young engineers and scientists could overcome adversity to pull off great feats. India had achieved what only 10 other countries (U.S., Soviet Union, West Germany, China, France, U.K., Australia, Canada, Japan, and Italy) had achieved until then. Since then, India has gone on to achieve feats through its space programmes that even fewer countries have managed so far.



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