Skip to content
Friday, March 13, 2026
Diverging trajectories of trust in healthcare and on-line information seeking: what’s next with LLMs

Diverging trajectories of trust in healthcare and on-line information seeking: what’s next with LLMs

February 1, 2026February 1, 2026
Weekly Roundup – January 31, 2026

Weekly Roundup – January 31, 2026

January 31, 2026February 1, 2026
Embedding clinical intelligence to help close care gaps

Embedding clinical intelligence to help close care gaps

January 31, 2026January 31, 2026
Impact of Mobilization Facilitated by Wearable Device Enhanced Patient Monitoring/Electrophysiology Pod–Based Feedback on Postoperative Complications Following Colorectal Cancer Surgery: Randomized Controlled Trial

Impact of Mobilization Facilitated by Wearable Device Enhanced Patient Monitoring/Electrophysiology Pod–Based Feedback on Postoperative Complications Following Colorectal Cancer Surgery: Randomized Controlled Trial

January 31, 2026January 31, 2026
Mediformatica

Mediformatica

The Digital Health News Aggregator

  • Blog
  • Latest News
    • AI News
  • Videos
  • Podcasts
  • Daily Digest
  • Taxonomy
  • About
    • MediFormatica
    • Hazem El-Oraby
    • Stay “In The Know…”
    • Legacy Website
    • Sitemap

Tag: Digital medicine

A deep learning based automatic report generator for retinal optical coherence tomography images

A deep learning based automatic report generator for retinal optical coherence tomography images

October 20, 2025October 20, 2025npj Digital Medicine

Reading and summarizing insights from Optical Coherence Tomography (OCT) images is a routine yet time-consuming task that requires expensive time from experienced ophthalmologists. This paper introduces the Multi-label OCT Report Generation (MORG) model, a…

Continue Reading
Semi-automated surveillance of surgical site infections using machine learning and rule-based classification models

Semi-automated surveillance of surgical site infections using machine learning and rule-based classification models

October 17, 2025October 18, 2025npj Digital Medicine

Surgical site infections (SSIs), among the most frequent healthcare-associated infections, require surveillance, but traditional methods are labour-intensive. We developed machine learning (ML) and rule-based models for the semi-automated detection of deep and organ/space SSIs…

Continue Reading
Navigating the tradeoff between personal privacy and data utility in speech anonymization for clinical research

Navigating the tradeoff between personal privacy and data utility in speech anonymization for clinical research

October 17, 2025October 18, 2025npj Digital Medicine

Speech data inherently contains personally identifiable information. Anonymization strategies to obscure this while preserving essential characteristics all represent a tradeoff between privacy and utility. We examine this balancing act of modifying voice characteristics, masking…

Continue Reading
When helpfulness backfires: LLMs and the risk of false medical information due to sycophantic behavior

When helpfulness backfires: LLMs and the risk of false medical information due to sycophantic behavior

October 17, 2025October 17, 2025npj Digital Medicine

Large language models (LLMs) exhibit a vulnerability arising from being trained to be helpful: a tendency to comply with illogical requests that would generate false information, even when they have the knowledge to identify…

Continue Reading
External validation of PreOpNet to predict 30-day mortality after major non-cardiac surgery using digital electrocardiogram

External validation of PreOpNet to predict 30-day mortality after major non-cardiac surgery using digital electrocardiogram

October 17, 2025October 17, 2025npj Digital Medicine

PreOpNet is a novel deep-learning algorithm using 12-lead digital electrocardiogram (ECG) for preoperative risk assessment of all-cause death and major adverse cardiac events (MACE) within 30 days. Its performance in European high-risk patients undergoing…

Continue Reading
A multimodal uncertainty-aware AI system optimizes ovarian cancer risk assessment workflow

A multimodal uncertainty-aware AI system optimizes ovarian cancer risk assessment workflow

October 17, 2025October 17, 2025npj Digital Medicine

Accurate ovarian cancer screening and diagnosis are critical for patient survival. We present UMORSS, an AI-assisted diagnostic system integrating ultrasound (US) imaging and clinical data with uncertainty quantification for precise ovarian cancer risk assessment….

Continue Reading
Automated real-time assessment of intracranial hemorrhage detection AI using an ensembled monitoring model (EMM)

Automated real-time assessment of intracranial hemorrhage detection AI using an ensembled monitoring model (EMM)

October 16, 2025October 17, 2025npj Digital Medicine

Artificial intelligence (AI) tools for radiology are commonly unmonitored once deployed. The lack of real-time case-by-case assessments of AI prediction confidence requires users to independently distinguish between trustworthy and unreliable AI predictions, which increases…

Continue Reading
Evaluating the performance of general purpose large language models in identifying human facial emotions

Evaluating the performance of general purpose large language models in identifying human facial emotions

October 16, 2025October 17, 2025npj Digital Medicine

We evaluated the ability of three leading LLMs (GPT-4o, Gemini 2.0 Experimental, and Claude 3.5 Sonnet) to recognize human facial expression using the NimStim dataset. GPT and Gemini matched or exceeded human performance, especially…

Continue Reading
Generalized multi task learning framework for glucose forecasting and hypoglycemia detection using simulation to reality

Generalized multi task learning framework for glucose forecasting and hypoglycemia detection using simulation to reality

October 16, 2025October 16, 2025npj Digital Medicine

Continuous prediction of glucose levels and hypoglycemia events is critical for managing type 1 diabetes mellitus (T1DM) under intensive insulin therapy. Existing models focus on a single task, limiting their practicality and adaptability in…

Continue Reading
Evidential deep learning-based ALK-expression screening using H&E-stained histopathological images

Evidential deep learning-based ALK-expression screening using H&E-stained histopathological images

October 14, 2025October 14, 2025npj Digital Medicine

Efficient and accurate identification of genetic alterations of non-small cell lung cancer is a critical diagnostic process for targeted therapies. Utilizing advanced modern deep learning is a potential solution that can accurately predict genetic…

Continue Reading

Posts navigation

Older posts
Newer posts

FOLLOW US ON SOCIAL MEDIA

Quotes

It all comes back to helping patients. That's the reason why we have an innovations office. We have some of the best physicians, scientists and engineers in the world right here in Cleveland who come up with brilliant ideas every day. And we need a way of bringing these to the market to help patients today and in the future. We want to reduce healthcare costs if we can come up with a less expensive way of doing something. We need to innovate around what we traditionally do but then also look at new avenues that we can explore to impact patient care.

D. Geoffrey Vince

Recent Posts

  • Diverging trajectories of trust in healthcare and on-line information seeking: what’s next with LLMs

    Diverging trajectories of trust in healthcare and on-line information seeking: what’s next with LLMs

    February 1, 2026February 1, 2026Comments Off on Diverging trajectories of trust in healthcare and on-line information seeking: what’s next with LLMs
  • What impact has healow had on your organization and the patients’ experience?

    What impact has healow had on your organization and the patients’ experience?

    January 31, 2026February 1, 2026Comments Off on What impact has healow had on your organization and the patients’ experience?
  • Weekly Roundup – January 31, 2026

    Weekly Roundup – January 31, 2026

    January 31, 2026February 1, 2026Comments Off on Weekly Roundup – January 31, 2026
  • Embedding clinical intelligence to help close care gaps

    Embedding clinical intelligence to help close care gaps

    January 31, 2026January 31, 2026Comments Off on Embedding clinical intelligence to help close care gaps
  • Impact of Mobilization Facilitated by Wearable Device Enhanced Patient Monitoring/Electrophysiology Pod–Based Feedback on Postoperative Complications Following Colorectal Cancer Surgery: Randomized Controlled Trial

    Impact of Mobilization Facilitated by Wearable Device Enhanced Patient Monitoring/Electrophysiology Pod–Based Feedback on Postoperative Complications Following Colorectal Cancer Surgery: Randomized Controlled Trial

    January 31, 2026January 31, 2026Comments Off on Impact of Mobilization Facilitated by Wearable Device Enhanced Patient Monitoring/Electrophysiology Pod–Based Feedback on Postoperative Complications Following Colorectal Cancer Surgery: Randomized Controlled Trial
  • Meditech founder Neil Pappalardo dies at 83

    Meditech founder Neil Pappalardo dies at 83

    January 31, 2026January 31, 2026Comments Off on Meditech founder Neil Pappalardo dies at 83
  • The Landscape of Mobile Apps for Healthy Eating: Case Study for a Systematic Review and Quality Assessment

    The Landscape of Mobile Apps for Healthy Eating: Case Study for a Systematic Review and Quality Assessment

    January 31, 2026January 31, 2026Comments Off on The Landscape of Mobile Apps for Healthy Eating: Case Study for a Systematic Review and Quality Assessment
  • Decagon raises $250M for AI agents, triples valuation to $4.5B

    Decagon raises $250M for AI agents, triples valuation to $4.5B

    January 30, 2026January 31, 2026Comments Off on Decagon raises $250M for AI agents, triples valuation to $4.5B
  • Successful AI adoption requires meaningful change management

    Successful AI adoption requires meaningful change management

    January 30, 2026January 31, 2026Comments Off on Successful AI adoption requires meaningful change management
  • The Safe AI in Medicaid Alliance can help providers hone their tactics

    The Safe AI in Medicaid Alliance can help providers hone their tactics

    January 30, 2026January 31, 2026Comments Off on The Safe AI in Medicaid Alliance can help providers hone their tactics

Tags

ABOUT (2581) Access (2206) AI (7305) AI Group (4699) Artificial Intelligence (3316) Clinical (4947) Daily (1870) data (6435) digital (7712) digital health (7218) EHR (1697) funding (1904) Health (15861) Healthcare (13930) Healthcare IT (5458) Healthcare IT Today (2596) health IT (4440) health tech (1870) HIT (5417) HIT Consultant (4728) Hospital (3160) Hospitals (2373) innovation (1981) intelligence (2781) IT (12961) Management (2760) Medical (4544) Medicine (2562) model (1611) network (1735) News (8615) NHS (1883) OR (2161) partnership (1759) Patients (5679) platform (2998) Provider (2298) providers (2476) research (2814) risk (1686) software (1819) study (1692) Technology (5713) THIS (7650) WHO (2189)

MediFormatica

Mediformatica collects and shares the latest news and articles related to Digital Health. MediFormatica also has its own original posts. It's like a one-stop-shop to stay up to date with everything related to Digital Health.

News Aggregator

  • Latest News
  • Daily Reads
  • Frequent Updates
  • Podcasts
  • Videos
  • Daily Digest

Follow us on Social Media

MediFormatica | Theme: News Vibrant by CodeVibrant.
Home
Latest News
In The Know
Search
More
We noticed you've been enjoying MediFormatica's content. Would you like to get notifications on the latest Health Tech news? OK No thanks

Cookie Policy - Terms and Conditions - Privacy Policy