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This Blue Valley teen uses AI to research cancer. Trump’s budget cuts could halt his work | KCUR

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Matthew Chen, a senior at Blue Valley North High School, knows the importance of cancer research firsthand — he’s been working with the University of Kansas Cancer Center for two years to look into the disease.

He also joined cancer survivors and medical experts with the American Cancer Society Cancer Action Network last month in Washington, D.C., to advocate for cancer research funding following the threat of federal budget cuts.

The Trump administration has proposed slashing billions of dollars from the National Institutes of Health budget for 2026 and cutting nearly 40% of the National Cancer Institute’s funding.

At a time when more than 2 million new cancer cases will be diagnosed this year and more than 600,000 people will die from the disease, Chen said lawmakers should be putting more into the agency’s budget and not cutting back.

“These numbers are extremely high, and now, more than ever, we need increased efforts on cancer research for better treatments in cancer prevention,” Chen said. “Because cancer can affect anybody.”

Chen, 16, got his start with the KU Cancer Center by volunteering at cancer screening events, eventually moving into cancer research.

At first, Chen spent time experimenting with artificial intelligence and coding in different programming languages. That would later become his focus to help predict patient outcomes, side effects and quality of life from cancer treatment.

After studying existing research, he began writing code, training computer models and spending hours collecting data on patient outcomes. One of his projects looked at where people live and how that impacts their ability to afford cancer treatment.

Another AI model he built tracks lymphocytes, a type of white blood cell, in patients across their treatment.

“It helps doctors to sort of tailor the treatment that patients receive based on what side effects, or the severity of the reaction that they’re predicted to have,” Chen said.

In Washington, D.C.

Chen attended a U.S. Senate Appropriations subcommittee hearing last month during which lawmakers reviewed Trump’s budget request to shrink NIH funding. He said he was relieved to hear bipartisan support from legislators, including from U.S. Sen. Jerry Moran of Kansas, to whom he spoke after the event.

“It was great to feel like I personally am making a difference, and to let Senator Moran know that his constituents care a lot about this issue,” Chen said.

Matthew Chen, a senior at Blue Valley North High School, spoke with U.S. Sen. Jerry Moran of Kansas after a Senate Appropriations subcommittee hearing in June to review Trump’s budget request to shrink NIH funding.

National cuts to cancer research could directly impact Kansans, Chen said. The KU Cancer Center is the state’s only NCI-designated cancer center, and it provides residents with access to clinical trials and education on cancer prevention and detection, he said.

Megan Word, the government relations director for ACS CAN in Kansas and Nebraska, said the cancer center also gives patients access to newer treatments and more specialists who treat specific cancers.

The American Cancer Society also has a Hope Lodge in Kansas City, where Word said people who travel more than 50 miles for treatment can stay free of charge.

Word said Kansans are lucky to have those resources, and the group is working to ensure the whole state can access them.

“We can’t do that without research funding. We can’t do that without early detection, prevention screening programs,” Word said. “To look and try to estimate how we’re going to keep that support system in place if we’re looking at a reduction as large as the president has proposed, it’s really unbelievable.”

Funding cuts

Additional federal cuts could impact other cancer prevention efforts across the state.

Trump proposed cutting $4 billion from the Centers for Disease Control and Prevention, which funds the Kansas registry that tracks how often residents are diagnosed with cancer, what type they have and their survival outcomes.

Word said some of the state’s cancer prevention programs have already been impacted by earlier cuts and layoffs.

The Department of Health and Human Services closed the CDC’s Office on Smoking and Health, which Word said shutters funding that went toward states’ work on tobacco cessation and prevention education.

Word said more cuts to the CDC under Trump’s budget proposal could threaten the state’s program to detect breast and cervical cancer.

“The current actions that have frozen funding, slash staffing and talk of future funding cuts for lifesaving cancer research is unacceptable. These cuts will have life-threatening consequences,” Word said. “That means fewer people will have access to clinical trials. Researchers on the cusp of new discoveries will be forced to shut off the lights.”

For now, Chen said he’s grateful for the opportunity to get hands-on experience in the biomedical field and to learn firsthand the importance of that work.

Chen said he’s been so inspired by his work that he hopes cancer research will be part of whatever job he pursues in the future.

“If there are these severe cuts, that might not be an option for future generations, and I want to ensure that it is because it’s such a great opportunity, and it helps not only high schoolers, but it helps cancer patients as well,” Chen said.





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Joint UT, Yale research develops AI tool for heart analysis – The Daily Texan

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A study published on June 23 in collaboration with UT and Yale researchers developed an artificial intelligence tool capable of performing and analyzing the heart using echocardiography. 

The app, PanEcho, can analyze echocardiograms, or pictures of the heart, using ultrasounds. The tool was developed and trained on nearly one million echocardiographic videos. It can perform 39 echocardiographic tasks and accurately detect conditions such as systolic dysfunction and severe aortic stenosis.

“Our teammates helped identify a total of 39 key measurements and labels that are part of a complete echocardiographic report — basically what a cardiologist would be expected to report on when they’re interpreting an exam,” said Gregory Holste, an author of the study and a doctoral candidate in the Department of Electrical and Computer Engineering. “We train the model to predict those 39 labels. Once that model is trained, you need to evaluate how it performs across those 39 tasks, and we do that through this robust multi site validation.” 

Holste said out of the functions PanEcho has, one of the most impressive is its ability to measure left ventricular ejection fraction, or the proportion of blood the left ventricle of the heart pumps out, far more accurately than human experts. Additionally, Holste said PanEcho can analyze the heart as a whole, while humans are limited to looking at the heart from one view at a time. 

“What is most unique about PanEcho is that it can do this by synthesizing information across all available views, not just curated single ones,” Holste said. “PanEcho integrates information from the entire exam — from multiple views of the heart to make a more informed, holistic decision about measurements like ejection fraction.” 

PanEcho is available for open-source use to allow researchers to use and experiment with the tool for future studies. Holste said the team has already received emails from people trying to “fine-tune” the application for different uses. 

“We know that other researchers are working on adapting PanEcho to work on pediatric scans, and this is not something that PanEcho was trained to do out of the box,” Holste said. “But, because it has seen so much data, it can fine-tune and adapt to that domain very quickly. (There are) very exciting possibilities for future research.”



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Google launches AI tools for mental health research and treatment

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Google announced two new artificial intelligence initiatives on July 7, 2025, designed to support mental health organizations in scaling evidence-based interventions and advancing research into anxiety, depression, and psychosis treatments.

The first initiative involves a comprehensive field guide developed in partnership with Grand Challenges Canada and McKinsey Health Institute. According to the announcement from Dr. Megan Jones Bell, Clinical Director for Consumer and Mental Health at Google, “This guide offers foundational concepts, use cases and considerations for using AI responsibly in mental health treatment, including for enhancing clinician training, personalizing support, streamlining workflows and improving data collection.”

The field guide addresses the global shortage of mental health providers, particularly in low- and middle-income countries. According to analysis from the McKinsey Health Institute cited in the document, “closing this gap could result in more years of life for people around the world, as well as significant economic gains.”

Summary

Who: Google for Health, Google DeepMind, Grand Challenges Canada, McKinsey Health Institute, and Wellcome Trust, targeting mental health organizations and task-sharing programs globally.

What: Two AI initiatives including a practical field guide for scaling mental health interventions and a multi-year research investment for developing new treatments for anxiety, depression, and psychosis.

When: Announced July 7, 2025, with ongoing development and research partnerships extending multiple years.

Where: Global implementation with focus on low- and middle-income countries where mental health provider shortages are most acute.

Why: Address the global shortage of mental health providers and democratize access to quality, evidence-based mental health support through AI-powered scaling solutions and advanced research.

The 73-page guide outlines nine specific AI use cases for mental health task-sharing programs, including applicant screening tools, adaptive training interfaces, real-time guidance companions, and provider-client matching systems. These tools aim to address challenges such as supervisor shortages, inconsistent feedback, and protocol drift that limit the effectiveness of current mental health programs.

Task-sharing models allow trained non-mental health professionals to deliver evidence-based mental health services, expanding access in underserved communities. The guide demonstrates how AI can standardize training, reduce administrative burdens, and maintain quality while scaling these programs.

According to the field guide documentation, “By standardizing training and avoiding the need for a human to be involved at every phase of the process, AI can help mental health task-sharing programs effectively scale evidence-based interventions throughout communities, maintaining a high standard of psychological support.”

The second initiative represents a multi-year investment from Google for Health and Google DeepMind in partnership with Wellcome Trust. The funding, which includes research grant funding from the Wellcome Trust, will support research projects developing more precise, objective, and personalized measurement methods for anxiety, depression, and psychosis conditions.

The research partnership aims to explore new therapeutic interventions, potentially including novel medications. This represents an expansion beyond current AI applications into fundamental research for mental health treatment development.

The field guide acknowledges that “the application of AI in task-sharing models is new and only a few pilots have been conducted.” Many of the outlined use cases remain theoretical and require real-world validation across different cultural contexts and healthcare systems.

For the marketing community, these developments signal growing regulatory attention to AI applications in healthcare advertising. Recent California guidance on AI healthcare supervision and Google’s new certification requirements for pharmaceutical advertising demonstrate increased scrutiny of AI-powered health technologies.

The field guide emphasizes the importance of regulatory compliance for AI mental health tools. Several proposed use cases, including triage facilitators and provider-client matching systems, could face classification as medical devices requiring regulatory oversight from authorities like the FDA or EU Medical Device Regulation.

Organizations considering these AI tools must evaluate technical infrastructure requirements, including cloud versus edge computing approaches, data privacy compliance, and integration with existing healthcare systems. The guide recommends starting with pilot programs and establishing governance committees before full-scale implementation.

Technical implementation challenges include model selection between proprietary and open-source systems, data preparation costs ranging from $10,000 to $90,000, and ongoing maintenance expenses of 10 to 30 percent of initial development costs annually.

The initiatives build on growing evidence that task-sharing approaches can improve clinical outcomes while reducing costs. Research cited in the guide shows that mental health task-sharing programs are cost-effective and can increase the number of people treated while reducing mental health symptoms, particularly in low-resource settings.

Real-world implementations highlighted in the guide include The Trevor Project’s AI-powered crisis counselor training bot, which trained more than 1,000 crisis counselors in approximately one year, and Partnership to End Addiction’s embedded AI simulations for peer coach training.

These organizations report improved training efficiency and enhanced quality of coach conversations through AI implementation, suggesting practical benefits for established mental health programs.

The field guide warns that successful AI adoption requires comprehensive planning across technical, ethical, governance, and sustainability dimensions. Organizations must establish clear policies for responsible AI use, conduct risk assessments, and maintain human oversight throughout implementation.

According to the World Health Organization principles referenced in the guide, responsible AI in healthcare must protect autonomy, promote human well-being, ensure transparency, foster responsibility and accountability, ensure inclusiveness, and promote responsive and sustainable development.

Timeline

  • July 7, 2025: Google announces two AI initiatives for mental health research and treatment
  • January 2025California issues guidance requiring physician supervision of healthcare AI systems
  • May 2024: FDA reports 981 AI and machine learning software devices authorized for medical use
  • Development ongoing: Field guide created through 10+ discovery interviews, expert summit with 20+ specialists, 5+ real-life case studies, and review of 100+ peer-reviewed articles



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New Research Shows Language Choice Alone Can Guide AI Output Toward Eastern or Western Cultural Outlooks

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A new study shows that the language used to prompt AI chatbots can steer them toward different cultural mindsets, even when the question stays the same. Researchers at MIT and Tongji University found that large language models like OpenAI’s GPT and China’s ERNIE change their tone and reasoning depending on whether they’re responding in English or Chinese.

The results indicate that these systems translate language while also reflecting cultural patterns. These patterns appear in how the models provide advice, interpret logic, and handle questions related to social behavior.

Same Question, Different Outlook

The team tested both GPT and ERNIE by running identical tasks in English and Chinese. Across dozens of prompts, they found that when GPT answered in Chinese, it leaned more toward community-driven values and context-based reasoning. In English, its responses tilted toward individualism and sharper logic.

Take social orientation, for instance. In Chinese, GPT was more likely to favor group loyalty and shared goals. In English, it shifted toward personal independence and self-expression. These patterns matched well-documented cultural divides between East and West.

When it came to reasoning, the shift continued. The Chinese version of GPT gave answers that accounted for context, uncertainty, and change over time. It also offered more flexible interpretations, often responding with ranges or multiple options instead of just one answer. In contrast, the English version stuck to direct logic and clearly defined outcomes.

No Nudging Needed

What’s striking is that these shifts occurred without any cultural instructions. The researchers didn’t tell the models to act more “Western” or “Eastern.” They simply changed the input language. That alone was enough to flip the models’ behavior, almost like switching glasses and seeing the world in a new shade.

To check how strong this effect was, the researchers repeated each task more than 100 times. They tweaked prompt formats, varied the examples, and even changed gender pronouns. No matter what they adjusted, the cultural patterns held steady.

Real-World Impact

The study didn’t stop at lab tests. In a separate exercise, GPT was asked to choose between two ad slogans, one that stressed personal benefit, another that highlighted family values. When the prompt came in Chinese, GPT picked the group-centered slogan most of the time. In English, it leaned toward the one focused on the individual.

This might sound small, but it shows how language choice can guide the model’s output in ways that ripple into marketing, decision-making, and even education. People using AI tools in one language may get very different advice than someone asking the same question in another.

Can You Steer It?

The researchers also tested a workaround. They added cultural prompts, telling GPT to imagine itself as a person raised in a specific country. That small nudge helped the model shift its tone, even in English, suggesting that cultural context can be dialed up or down depending on how the prompt is framed.

Why It Matters

The findings concern how language affects the way AI models present information. Differences in response patterns suggest that the input language influences how content is structured and interpreted. As AI tools become more integrated into routine tasks and decision-making processes, language-based variations in output may influence user choices over time.

Notes: This post was edited/created using GenAI tools. Image: DIW-Aigen.

Read next: Jack Dorsey Builds Offline Messaging App That Uses Bluetooth Instead of the Internet





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