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Latest posts tagged with #UTHealth on Bluesky

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Posts tagged #UTHealth

Effective communication depends on accurately assessing shared understanding with an audience. Framing provides context that guides how a message is interpreted. Clear and intentional language is especially important when communicating with non-technical audiences. #AI #UTHealth #MSBMI #Informatics

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Just as with audience design, prompt optimization involves adjusting an existing prompt to improve output. Prompt engineering formalizes something humans already do intuitively. #MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC #Promptengineering #Informatics #ArtificialIntelligence

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Reporting from the MSBMI research seminar!

We’re joined by Amy Franklin, PhD, who is presenting: "Prompt Engineering for People: Designing How We Talk About Informatics" #MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC #Promptengineering #Informatics #ArtificialIntelligence #Seminar

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An important component of the study is the use of standardized representations for contextual factors. This helps support interoperability across organizations and makes independent analyses more comparable while preserving local control of data. #TMC #MSBMI #UTHealth #Healthcare #Informatics #AI

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This seminar explores how to use information already captured in EHRs to identify unwarranted variation at the site level. By focusing on local contextual factors, the approach aims to detect absolute variation rather than relative differences alone. #TMC #MSBMI #UTHealth #Informatics

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Centralized analyses also raise practical concerns. Clinical variation data can be sensitive, and organizations may be hesitant to share operational details. When access is restricted, reporting and comparison become difficult. #TMC #MSBMI #UTHealth #Healthcare #Informatics #Research #Seminar #AI

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A challenge with identifying unwarranted variation is that current approaches tend to focus on regional or site-level patterns. These methods can show where variation exists, but often cannot explain what is driving it. #TMC #MSBMI #UTHealth #Healthcare #Informatics #Research #Seminar #AI #health

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Unwarranted clinical variation refers to care that does not align with a patient’s needs or clinical characteristics. It often stems from local contextual factors and can lead to higher costs, unnecessary interventions, and departures from evidence-based care. #UTHealth #MSBMI #Informatics #EHR

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Reporting from the MSBMI research seminar!

We’re joined by Apollo McOwiti, who is presenting: "Predictive Machine Learning Algorithm for Identifying Unwarranted Clinical Variation from Contextual Factors Derived from EHR Encounter Data" #MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC

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Building on that point, Dr. Roberts discussed an alternative approach: using the same large language model multiple times and in different ways. This enables researchers to more effectively surface and work with the information already embedded in the model. #LLMK #MSBMI #AI #NLP #UTHealth #TMC

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LLMs can make everyone an NLP expert- or can it?
Dr. Roberts believes accessibility is NOT the same as expertise. While people can do something, does that mean they really know how to do it correctly? #NLP #LLM #AI #BiomedicalInformatics #Informatics #UTHealth #MSBMI #TMC #Largelanguagemodel

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Reporting from the MSBMI research seminar!

We’re joined by Kirk Roberts, PhD, MS, who is presenting: "The Rise of LLMs from an NLP Methodologist’s Perspective" #MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC

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This seminar touches on how the medical humanities can help us look more closely at the assumptions that are changing technology in healthcare. These approaches encourage teams to pause, ask different questions, and consider how tools will be experienced by people. #MSBMI #AI #UTHealth #Healthcare

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Dr. Ostherr shared ongoing efforts at Rice University’s Medical Humanities Research Institute that explore how human-centered perspectives can strengthen Health AI. These include the planned 2026 launch of the "Center for Humanities-Based Health AI Innovation". #UTHealth #MSBMI #AI #Riceuniversity

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Medical humanities offer tools to better understand how AI fits into clinical care. By examining language, narrative, and ethics, this field helps ensure that technology remains grounded in the human side of medicine. #MSBMI #Ethics #AI #UTHealth #TMC #ArtificialIntelligence #Healthcare

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Reporting from the MSBMI research seminar!

We’re joined by Kirsten Ostherr, PhD, MPH, who is presenting: "Medical Humanities for Health AI" #MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC

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Pancreatic Cancer Prediction Using LLM Embeddings with Classifiers #AMIA25 #UTHealth #MSBMI

*ੈ✩‧༺☆༻*ੈ✩‧₊˚
🎉 Congratulations to Bingyu Mao 🎉
Winning 2nd Place
KDDM Innovation Award at AMIA 2025.
*ੈ✩‧˚༺☆༻*ੈ✩‧˚

Click to View Link to Poster:
workshopamia2025.github.io/AMIA-KDDM-20...

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Continued work aims to expand these methods to new conditions, improve model precision, and address the regulatory steps needed to bring this technology into future care #MSBMI #UTHealth #TMC #AI #Machinelearning

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Zimolzak also highlighted the challenges of building diagnostic AI. Preparing structured data and ensuring quality inputs are essential steps for making these systems useful in clinical settings. #MSBMI #AI #Machinelearning #UTHealth #TMC

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Two-stage algorithms, combining rule-based triggers with machine learning, reached predictive values above 90 percent. This approach shows promise for identifying diagnostic errors earlier and improving patient safety. #MSBMI #AI #Machinelearning #UTHealth #TMC

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Manual review showed that these triggers identified missed opportunities in diagnosis nearly half the time. Machine learning models built on these findings further improved detection accuracy. #MSBMI #AI #Machinelearning #TMC #UTHealth

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Using Veterans Affairs data, this research developed electronic triggers to flag cases at risk for missed diagnoses, like patients discharged with stroke risk factors or abdominal pain who were later hospitalized. #MSBMI #TMC #UTHealth #AI #Machinelearning

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Reporting from the MSBMI research seminar!

We’re joined by Andrew Zimolzak, MD, MMSc, who is presenting: "Machine Learning to Enhance Electronic Detection of Diagnostic Errors" #MSBMI #Machinelearning #BiomedicalInformatics #Healthcare #UTHealth #TMC

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There are now 900 FDA-cleared imaging AI applications, but implementing them is not always simple. Keeping workflows consistent and supporting clinical teams is just as important as adopting the newest technology.
#MSBMI #MedicalImaging #MSBMI #UTHealth #TMC #Healthcare

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Oliver says consolidating diverse imaging systems into a single, unified enterprise-wide platform creates significant value by enhancing workflows and reducing operational redundancies.
#UTHealth #MSBMI #Informatics #Biomedicalinformatics #Healthcare

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From diagnostics to treatment planning, enterprise imaging plays a central role in healthcare operations. As the adoption of AI grows, organizations must ensure systems stay stable, secure, and scalable while introducing these new technologies.
#MSBMI #ClinicalOperations #UTHealth #Informatics

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Reporting from the MSBMI research seminar!

We’re joined by Oliver Galicki, MPH, PMP, CHCIO, who is presenting: "Enterprise Imaging Fundamentals in the AI Age"
#MSBMI #AI #BiomedicalInformatics #Healthcare #UTHealth #TMC

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The session wrapped with a clear message: building better AI means thinking carefully about who is included, and who might be left out. Epistemic justice gives us a way to think about fairness as we develop and apply these tools.
#MSBMI #HealthEquity #UTHealth #TMC

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This talk isn’t just identifying risks, it’s also focused on mitigating harm. Dr. Bakken is discussing strategies for designing more equitable systems that recognize diverse lived experiences and support more inclusive innovation. #MSBMI #HealthEquity #UTHealth #TMC #AI

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Generative AI, digital phenotyping, and machine learning algorithms carry the risk of perpetuating epistemic injustice. This especially when models are trained on data that excludes, flattens, or misrepresents certain populations. #MSBMI #DataEquity #UTHealth #TMC

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