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How artificial intelligence is transforming feline medicine

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A powerful survival instinct that cats have is the ability to hide pain. As both predators and prey, cats evolved to mask signs of illness or injury to avoid being seen as vulnerable. In the wild, this meant safety. In clinical practice today, it often means late diagnoses and missed opportunities for early care. Cats are subtle when they’re unwell, and this contributes to one of the most persistent challenges in veterinary medicine: feline under-medicalization.

The feline care gap

Although an estimated 74 million domesticated cats are in the US only 40%receive annual veterinary care, compared to 82% of dogs.1,2 According to the CATalyst Council, the current feline veterinary market is valued at $12 billion; however, if cat utilization matched that of dogs, the market could expand to $32 billion, representing an untapped $20 billion opportunity.3 Encouragingly, feline visits and revenue have grown even as other segments have plateaued. Yet detecting what cats instinctively hide continues to be the greatest barrier.

Understanding silent symptoms

Illness in cats rarely begins with dramatic signs. Instead, it starts with small behavioral shifts:

  • A subtle decline in jumping
  • Changes in sleep cycles
  • Less frequent or reduced play behavior
  • Changes in eating and drinking behavior
  • Altered litter box behavior and usage
  • Reduced grooming or altered body posture
  • Withdrawal or increased nighttime activity

Because cats tend to suppress these signs, especially in stressful environments like veterinary clinics, they often go unnoticed. This creates a species-specific blind spot in veterinary medicine.

Aligning with feline instincts to close the care gap

The medicalization gap isn’t just a matter of caregiver hesitation or access; it’s rooted in feline biology. Cats have evolved to hide signs of vulnerability. To close the gap, veterinary medicine must find ways to work with this reality, not against it.

This is where artificial intelligence (AI)-powered tools come in. By observing cats continuously in their natural, stress-free environment, new technologies are surfacing subtle early changes that humans alone often miss. These tools don’t force cats to communicate; they interpret what cats are already expressing through behavior.

Emerging tools that translate the subtle

One innovation in this space is Moggie, a behavior-tracking wearable explicitly designed for cats. Moggie monitors core feline behaviors, including walking, jumping, resting, grooming, and play, by using AI to detect deviations from each cat’s individual baseline. It helps surface meaningful behavioral changes that could indicate early illness or discomfort.

This technology is passive, non-invasive, and designed for continuous use in the cat’s natural habitat, where stress levels are low and instinctual behaviors are most pronounced.

Early patterns from caregivers and clinics using AI-driven behavior tools have shown promise:

  • Decreased jumping flagged early-stage arthritis
  • Fragmented sleep and pacing pointed toward hyperthyroidism
  • Reduced grooming revealed underlying dental pain

These insights don’t replace veterinary exams; they complement them, giving caregivers and clinicians richer, continuous behavioral context between visits.

From silence to signals

By equipping caregivers with objective insights and reducing reliance on subjective observation alone, AI-powered tools can:

  • Prompt earlier veterinary visits
  • Improve chronic disease monitoring
  • Strengthen caregiver-clinic communication
  • Increase trust and compliance over time

This approach aligns directly with the CATalyst Council’s call for proactive, tech-enabled, and cat-centric models of care that meet cats on their terms, not just in exam rooms.4

Cats will always hide pain, but that doesn’t mean we have to miss it. With AI, veterinary medicine is learning to detect the subtle signals cats have been conveying to us all along.

References

  1. American Veterinary Medical Association. U.S. Pet Ownership Statistics. American Veterinary Medical Association. Published 2024. https://www.avma.org/resources-tools/reports-statistics/us-pet-ownership-statistics
  2. 2025 Hill’s Pet Nutrition World of the cat report. Hill’s Pet Nutrition. Accessed July 2, 2025. https://na.hillsvna.com/en_US/resources-2/view/244
  3. CATalyst Council Releases First 2025 Market Insights Report: Feline Veterinary Care Emerges as Industry Growth Driver. News release. CATalyst Council. April 30, 2025. Accessed July 2, 2025. https://catalystcouncil.org/catalyst-council-releases-first-2025-market-insights-report-feline-veterinary-care-emerges-as-industry-growth-driver/
  4. Garrison G. The Feline Factor. Vet Advantage. Published May 2025. Accessed July 2, 2025. https://vet-advantage.com/vet-advantage/the-feline-factor/



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Radiomics-Based Artificial Intelligence and Machine Learning Approach for the Diagnosis and Prognosis of Idiopathic Pulmonary Fibrosis: A Systematic Review – Cureus

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Radiomics-Based Artificial Intelligence and Machine Learning Approach for the Diagnosis and Prognosis of Idiopathic Pulmonary Fibrosis: A Systematic Review  Cureus



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A Real-Time Look at How AI Is Reshaping Work : Information Sciences Institute

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Artificial intelligence may take over some tasks and transform others, but one thing is certain: it’s reshaping the job market. Researchers at USC’s Information Sciences Institute (ISI) analyzed LinkedIn job postings and AI-related patent filings to measure which jobs are most exposed, and where those changes are happening first. 

The project was led by ISI research assistant Eun Cheol Choi, working with students in a graduate-level USC Annenberg data science course taught by USC Viterbi Research Assistant Professor Luca Luceri. The team developed an “AI exposure” score to measure how closely each role is tied to current AI technologies. A high score suggests the job may be affected by automation, new tools, or shifts in how the work is done. 

Which Industries Are Most Exposed to AI?

To understand how exposure shifted with new waves of innovation, the researchers compared patent data from before and after a major turning point. “We split the patent dataset into two parts, pre- and post-ChatGPT release, to see how job exposure scores changed in relation to fresh innovations,” Choi said. Released in late 2022, ChatGPT triggered a surge in generative AI development, investment, and patent filings.

Jobs in wholesale trade, transportation and warehousing, information, and manufacturing topped the list in both periods. Retail also showed high exposure early on, while healthcare and social assistance rose sharply after ChatGPT, likely due to new AI tools aimed at diagnostics, medical records, and clinical decision-making.

In contrast, education and real estate consistently showed low exposure, suggesting they are, at least for now, less likely to be reshaped by current AI technologies.

AI’s Reach Depends on the Role

AI exposure doesn’t just vary by industry, it also depends on the specific type of work. Jobs like software engineer and data scientist scored highest, since they involve building or deploying AI systems. Roles in manufacturing and repair, such as maintenance technician, also showed elevated exposure due to increased use of AI in automation and diagnostics.

At the other end of the spectrum, jobs like tax accountant, HR coordinator, and paralegal showed low exposure. They center on work that’s harder for AI to automate: nuanced reasoning, domain expertise, or dealing with people.

AI Exposure and Salary Don’t Always Move Together

The study also examined how AI exposure relates to pay. In general, jobs with higher exposure to current AI technologies were associated with higher salaries, likely reflecting the demand for new AI skills. That trend was strongest in the information sector, where software and data-related roles were both highly exposed and well compensated.

But in sectors like wholesale trade and transportation and warehousing, the opposite was true. Jobs with higher exposure in these industries tended to offer lower salaries, especially at the highest exposure levels. The researchers suggest this may signal the early effects of automation, where AI is starting to replace workers instead of augmenting them.

“In some industries, there may be synergy between workers and AI,” said Choi. “In others, it may point to competition or replacement.”

From Class Project to Ongoing Research

The contrast between industries where AI complements workers and those where it may replace them is something the team plans to investigate further. They hope to build on their framework by distinguishing between different types of impact — automation versus augmentation — and by tracking the emergence of new job categories driven by AI. “This kind of framework is exciting,” said Choi, “because it lets us capture those signals in real time.”

Luceri emphasized the value of hands-on research in the classroom: “It’s important to give students the chance to work on relevant and impactful problems where they can apply the theoretical tools they’ve learned to real-world data and questions,” he said. The paper, Mapping Labor Market Vulnerability in the Age of AI: Evidence from Job Postings and Patent Data, was co-authored by students Qingyu Cao, Qi Guan, Shengzhu Peng, and Po-Yuan Chen, and was presented at the 2025 International AAAI Conference on Web and Social Media (ICWSM), held June 23-26 in Copenhagen, Denmark.

Published on July 7th, 2025

Last updated on July 7th, 2025



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SERAM collaborates on AI-driven clinical decision project

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The Spanish Society of Medical Radiology (SERAM) has collaborated with six other scientific societies to develop an AI-supported urology clinical decision-making project called Uro-Oncogu(IA)s.

Uro-Oncog(IA)s project team.SERAM

The initiative produced an algorithm that will “reduce time and clinical variability” in the management of urological patients, the society said. SERAM’s collaborators include the Spanish Urology Association (AEU), the Foundation for Research in Urology (FIU), the Spanish Society of Pathological Anatomy (SEAP), the Spanish Society of Hospital Pharmacy (SEFH), the Spanish Society of Nuclear Medicine and Molecular Imaging (SEMNIM), and the Spanish Society of Radiation Oncology (SEOR).

SERAM Secretary General Dr. MaríLuz Parra launched the project in Madrid on 3 July with AEU President Dr. Carmen González.

On behalf of SERAM, the following doctors participated in this initiative:

  • Prostate cancer guide: Dr. Joan Carles Vilanova, PhD, of the University of Girona,
  • Upper urinary tract guide: Dr. Richard Mast of University Hospital Vall d’Hebron in Barcelona,
  • Muscle-invasive bladder cancer guide: Dr. Eloy Vivas of the University of Malaga,
  • Non-muscle invasive bladder cancer guide: Dr. Paula Pelechano of the Valencian Institute of Oncology in Valencia,
  • Kidney cancer guide: Dr. Nicolau Molina of the University of Barcelona.



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