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A Hidden Threat to Research Integrity?

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14h05 ▪
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Fenelon L.

Artificial intelligence (AI) is now infiltrating laboratories and scientific publications, raising crucial questions about research integrity. A recent study reveals that over 13% of biomedical articles bear the marks of ChatGPT and similar tools.

A sweaty scientist hides a USB drive while a screen displays a menacing AI. A mysterious figure watches him. Suspense, tension, and technological secrecy dominate this dramatic scene.

In Brief

  • An analysis of 15 million biomedical articles reveals that 13.5% of 2024 publications show signs of AI use.
  • Researchers identified 454 “suspicious” words frequently used by AI tools, such as “delve,” “showcasing,” and “underscore.”
  • Current detection tools remain unreliable, sometimes mistaking historical texts for AI-generated content.
  • Experts are divided: some see it as a threat, others as a democratization of research.

AI Leaves Its Marks in Science

Researchers from Northwestern University, in collaboration with the Hertie Institute for Applied AI in Health, analyzed over 15 million scientific abstracts published on PubMed. Their finding is unequivocal: in 2024, generative AI, notably ChatGPT, has deeply marked the language of biomedical research.

To demonstrate this, the team compared the frequency of certain keywords in 2024 with those of 2021 and 2022. And the difference is striking: terms previously less common like “delves”, “underscores”, or “showcasing” have exploded in usage, to the point of becoming typical stylistic markers of AI-generated texts. 

This “word hunt” nonetheless reveals a more nuanced reality. Stuart Geiger, a professor at the University of California, San Diego, tempers the alarm: 

Language changes over time. “Delve” has skyrocketed, and this word is now in the vocabulary of society, partly because of ChatGPT.

Linguistic evolution thus poses a major dilemma. How to distinguish fraudulent use of AI from mere cultural influence? More worryingly: might researchers change their natural writing style for fear of being wrongly accused?

Between Democratization and Ethical Drift

Kathleen Perley, a professor at Rice University, takes a more nuanced position on the use of AI in scientific research

According to her, these tools can play a decisive role in democratizing access to academic research, especially for non-English-speaking researchers or those suffering from learning disabilities. 

In an academic environment dominated by English and formal requirements, AI can provide a real springboard for brilliant profiles, but marginalized by the language barrier.

This approach raises a fundamental question: should researchers who use tools to overcome structural obstacles really be penalized? Couldn’t AI, on the contrary, help bring to light quality work that has until now been invisible due to writing limitations rather than conceptual ones?

Derivatives, Biases, and False Positives, Science Facing the Limits of AI

But enthusiasm runs into very real drifts. The example of the Grok chatbot, developed by the company of Elon Musk, is a chilling illustration.

Since its last update, the tool has produced a series of antisemitic messages posted on X (formerly Twitter), going so far as to justify hateful remarks and praise Hitler. Such incidents remind us that even the most advanced models can convey dangerous biases if they are not properly supervised.

At the same time, AI detection tools struggle to prove reliable. ZeroGPT, for example, estimated that the United States Declaration of Independence was generated 97% by an AI, while GPTZero evaluates it at only 10%. This inconsistency reveals the immaturity of detection technologies and the risk of unfounded accusations.

Beyond technical tools, the emergence of AI in scientific research questions the very essence of intellect. Rigor, originality, and integrity are the pillars of scientific production. Can we preserve these values when the boundary between assistance and substitution becomes blurred?

More than ever, academic institutions must define clear guidelines. It is not about slowing innovation, but about drawing a line between ethical use and intellectual fraud. The future of research depends on our collective ability to integrate artificial intelligence without losing the soul of science.

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Fenelon L. avatar

Fenelon L.

Passionné par le Bitcoin, j’aime explorer les méandres de la blockchain et des cryptos et je partage mes découvertes avec la communauté. Mon rêve est de vivre dans un monde où la vie privée et la liberté financière sont garanties pour tous, et je crois fermement que Bitcoin est l’outil qui peut rendre cela possible.

DISCLAIMER

The views, thoughts, and opinions expressed in this article belong solely to the author, and should not be taken as investment advice. Do your own research before taking any investment decisions.





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SoundHound AI Stock Sank Today — Is the Artificial Intelligence Company a Buy?

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SoundHound AI (SOUN -4.73%) stock saw a pullback in Thursday’s trading. The company’s share price fell 4.7% in the session and had been down as much as 8.1% earlier in trading.

While there doesn’t appear to have been any major business-specific news behind the pullback, investors may have moved to take profits after a pop for the company’s share price earlier in the week. Despite today’s pullback, the stock is still up roughly 9% over the last week of trading. Even more striking, the company’s share price is up roughly 39% over the last three months.

Image source: Getty Images.

Is SoundHound AI stock a good buy right now?

SoundHound AI has been highly volatile over the last year of trading. While the company’s share price is still up roughly 197% across the stretch, it’s also still down approximatley 49% from its peak in the period.

Even as the company’s sales base has ramped up rapidly, sales growth has continued to accelerate. Revenue increased 151% year over year in the first quarter of the company’s current fiscal year, which ended March 31. The company still only posted $29.1 million in sales in the period, but sales growth in the quarter marked a dramatic improvement over the 73% annual growth it posted in the prior-year period.

SoundHound is an early mover in the voice-based agentic artificial intelligence (AI) space, and it has huge expansion potential over the long term — but its valuation profile still comes with a risk. The company now has a market capitalization of roughly $4.9 billion and is valued at approximately 31 times this year’s expected sales.

For investors with a very high risk tolerance, SoundHound AI could still be a worthwhile investment. The company has been posting very impressive sales momentum, but its valuation already prices in a lot of strong growth in the future. If you’re looking to build a position in SoundHound AI stock, using a dollar-cost-averaging strategy for your purchases may be better than buying in all at once at today’s prices.

Keith Noonan has no position in any of the stocks mentioned. The Motley Fool has no position in any of the stocks mentioned. The Motley Fool has a disclosure policy.



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Artificial Intelligence (AI) in Healthcare Market worth

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The prominent players operating in the Artificial Intelligence (AI) in healthcare market include Koninklijke Philips N.V. (Netherlands), Microsoft Corporation (US), Siemens Healthineers AG (Germany), NVIDIA Corporation (US), Epic Systems Corporation (US)

Browse 902 market data Tables and 67 Figures spread through 711 Pages and in-depth TOC on “Artificial Intelligence (AI) in Healthcare Market by Offering (Integrated), Function (Diagnosis, Genomic, Precision Medicine, Radiation, Immunotherapy, Pharmacy, Supply Chain), Application (Clinical), End User (Hospitals), Region – Global Forecast to 2030
The global Artificial Intelligence (AI) in Healthcare Market [https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-healthcare-market-54679303.html?utm_source=abnewswire.com&utm_medium=paidpr&utm_campaign=artificialintelligenceinhealthcaremarket], valued at US$14.92 billion in 2024, is forecasted to grow at a robust CAGR of 38.6%, reaching US$21.66 billion in 2025 and an impressive US$110.61billion by 2030. The growing incidence of chronic diseases, linked with an increasing geriatric population, puts substantial financial pressure on healthcare providers. There is a rising need for the early detection of conditions such as dementia and cardiovascular disorders. This can be done by analysing imaging data to recognize patterns, which helps create personalized treatment plans.

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Browse in-depth TOC on “Artificial Intelligence (AI) in Healthcare Market”

882 – Tables

61 – Figures

738 – Pages

By tools, the Artificial Intelligence (AI) in healthcare market for machine learning has been bifurcated into deep learning, supervised learning, reinforcement learning, unsupervised learning, and other machine learning technologies. The deep learning segment accounted for the largest share of the Artificial Intelligence (AI) in healthcare market in 2024. The capability to process vast amounts of unstructured medical data, such as electronic health records (HER), imaging, and genomics, allows accurate disease diagnosis and prediction. The integration of deep learning into healthcare is significantly boosting the AI in healthcare market, leading to substantial investments in diagnostic tools and predictive analytics. As computational power and data availability continue to increase, deep learning is set to unlock further advancements, solidifying its position as a key enabler of next-generation healthcare technologies.

By end user, the AI in healthcare market is segmented into healthcare providers, healthcare payers, patients, and other end users. In 2024, healthcare providers accounted for the largest share of the AI in healthcare market. The large share of this end-user segment can be attributed to the increasing budgets of hospitals to improve the quality of care provided and reduce the cost of care.

By geography, the Artificial Intelligence (AI) in healthcare market is segmented into five main regions: North America, Europe, Asia Pacific, Latin America, and the Middle East & Africa. The Asia Pacific region is projected to see a substantial growth rate during the forecast period. The Asia Pacific (APAC) region is experiencing substantial growth in adopting AI technologies within the healthcare sector, driven by a combination of demographic shifts, technological advancements, and increased investments in innovation. The rising elderly population in the region is a key factor, with the proportion of individuals aged 65 years and above increasing significantly. The demand for advanced healthcare solutions has surged as the aging population faces chronic and age-related conditions, necessitating efficient diagnostic, monitoring, and treatment tools. AI technologies are being integrated into various healthcare applications, including predictive analytics, telemedicine, medical imaging, and patient management systems. These innovations aim to address gaps in healthcare access, improve diagnostic accuracy, and streamline operations across the region.

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The prominent players operating in the Artificial Intelligence (AI) in healthcare market include Koninklijke Philips N.V. (Netherlands), Microsoft Corporation (US), Siemens Healthineers AG (Germany), NVIDIA Corporation (US), Epic Systems Corporation (US), GE Healthcare (US), Medtronic (US), Oracle (US), Veradigm LLC (US), Merative (IBM) (US), Google (US), Cognizant (US), Johnson & Johnson (US), Amazon Web Services, Inc. (US), among others. These companies adopted strategies such as product launches, product updates, expansions, partnerships, collaborations, mergers, and acquisitions to strengthen their market presence in the Artificial Intelligence (AI) in healthcare market.

Koninklijke Philips N.V. (Netherlands)

Koninklijke Philips N.V. is a leading player in the AI in the healthcare market. The company utilizes AI to deliver innovative tools across various areas, including diagnostic imaging, patient monitoring, and precision medicine. Its advanced AI-driven platforms, such as the Philips HealthSuite, facilitate the integration and analysis of extensive clinical data, which supports personalized treatment plans and improves patient outcomes. Philips focuses on organic and inorganic growth strategies to expand its market presence.

Strategic partnerships in high-potential markets and collaborations have been the key growth strategies of the company over the years. For example, in February 2025, Philips partnered with Medtronic to educate and train cardiologists and radiologists in India on advanced imaging techniques for structural heart diseases. This partnership aims to upskill 300+ clinicians in multi-modality imaging such as echocardiography (echo) and Magnetic Resonance Imaging (MRI), especially for End-Stage Renal Disease (ESRD) patients. In November 2023, Philips and NYU Langone Health partnered to focus on patient safety and outcomes. This partnership integrated innovative health technologies, including digital pathology, clinical informatics, and AI-enabled diagnostics, enabling real-time collaboration among clinicians. The company also focuses on winning contracts across several companies in the healthcare space. This helps the company expand its footprint. For instance, in September 2022, Philips and Mandaya Royal Hospital Puri (MRHP) in Jakarta underwent a digital transformation in a strategic partnership, enhancing patient-centered care and healthcare services.

Microsoft Corporation (US):

Microsoft Corporation is one of the leading providers of software & tools that include advanced AI capabilities in healthcare to improve patient outcomes, streamline operations, and drive innovation. Its Azure-based AI solutions support distinct applications such as medical imaging, genomics, and precision medicine. The company also provides healthcare-specific AI models through its Azure AI Model Catalog, which is constructed to support hospitals and research institutions in building and deploying tailored AI solutions proficiently. Moreover, the integration of Nuance’s AI-powered clinical and diagnostic tools encourages its capacity to support healthcare providers in decision-making and care delivery. The company continuously brings AI capabilities to the platforms in large-scale customer models. For instance, in March 2025, the company launched Microsoft Dragon Copilot, the first unified voice AI assistant in the healthcare industry that enables clinicians to streamline clinical documentation, surface information, and automate tasks.

Microsoft Corporation has invested significantly in R&D, which has improved its product portfolio and position in the AI market. Machine Learning (ML), deep learning, Natural Language Processing (NLP), and speech processing are the key focus areas of the company in the AI in healthcare market. The company continuously invests in a series of services and computational biology projects, including research support tools for next-generation precision healthcare, genomics, immunomics, CRISPR, and cellular and molecular biologics. It has a strong global presence, with key operations supported through its Azure cloud infrastructure across regions like North America, Europe, Asia-Pacific, and the Middle East.

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LLM-Optimized Research Paper Formats: AI-Driven Research App Opportunities Explored | AI News Detail

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The concept of shifting attention from human-centric to Large Language Model (LLM) attention, as highlighted by Andrej Karpathy in a tweet on July 10, 2025, opens a fascinating discussion about the future of research and information consumption in the AI era. Karpathy, a prominent figure in AI and former director of AI at Tesla, posits that 99% of attention may soon be directed toward LLMs rather than humans, raising the question: what does a research paper look like when designed for an LLM instead of a human reader? This idea challenges traditional formats like PDFs, which are static and optimized for human cognition with visual layouts and narrative structures. Instead, LLMs require data-rich, structured, and machine-readable formats that prioritize efficiency, context, and interoperability. This shift could revolutionize industries such as academia, tech development, and business intelligence by enabling faster knowledge synthesis and application. As of 2025, with AI adoption accelerating—Gartner reported in early 2025 that 80% of enterprises are piloting or deploying generative AI tools—the need for LLM-optimized content is becoming critical. This trend reflects a broader transformation in how information is created, consumed, and monetized in an AI-driven world, with significant implications for content creators and tech innovators.

From a business perspective, the idea of designing research for LLMs presents immense market opportunities. Companies that develop platforms or apps to create, curate, and deliver LLM-friendly research content could tap into a multi-billion-dollar market. According to a 2025 report by McKinsey, the generative AI market is projected to grow to $1.3 trillion by 2032, with content generation and data processing as key drivers. A ‘research app’ for LLMs, as Karpathy suggests, could serve industries like pharmaceuticals, where AI models analyze vast datasets for drug discovery, or finance, where real-time market insights are critical. Monetization strategies could include subscription models for premium datasets, API access for developers, or enterprise solutions for tailored LLM training data. However, challenges remain, such as ensuring data privacy and preventing bias in LLM outputs—issues that have plagued AI systems, as noted in a 2025 study by the MIT Sloan School of Management, which found that 60% of AI deployments faced ethical concerns. Businesses must also navigate a competitive landscape with players like Google, OpenAI, and Anthropic already dominating LLM development, requiring niche specialization to stand out.

On the technical side, designing research for LLMs involves moving beyond PDFs to formats like JSON, XML, or custom data schemas that encode information hierarchically for machine parsing. Unlike human readers, LLMs thrive on structured datasets with metadata, embeddings, and cross-references that enable rapid context retrieval and reasoning. Implementation challenges include standardizing formats across industries and ensuring compatibility with diverse LLM architectures—a hurdle given that, as of mid-2025, over 200 distinct LLM frameworks exist, per a report from the AI Index by Stanford University. Solutions could involve open-source protocols or industry consortia to define standards, much like the web evolved with HTML. Looking to the future, LLM-optimized research could lead to autonomous AI agents conducting real-time literature reviews or hypothesis generation by 2030, as predicted by a 2025 forecast from Deloitte. Regulatory considerations are also critical, with the EU AI Act of 2025 mandating transparency in AI data usage, which could impact how research content is structured. Ethically, ensuring that LLMs do not misinterpret or propagate flawed data remains a priority, requiring robust validation mechanisms. The potential for such innovation is vast, offering a glimpse into a future where knowledge creation is as much for machines as for humans, reshaping industries and workflows profoundly.



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