惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

罗磊的独立博客
www.infosecurity-magazine.com
www.infosecurity-magazine.com
V
Visual Studio Blog
T
The Blog of Author Tim Ferriss
GbyAI
GbyAI
Y
Y Combinator Blog
雷峰网
雷峰网
Last Week in AI
Last Week in AI
Jina AI
Jina AI
月光博客
月光博客
G
Google Developers Blog
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
Webroot Blog
Webroot Blog
Google DeepMind News
Google DeepMind News
博客园 - 三生石上(FineUI控件)
Hacker News - Newest:
Hacker News - Newest: "LLM"
N
News | PayPal Newsroom
H
Heimdal Security Blog
Recorded Future
Recorded Future
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
腾讯CDC
AWS News Blog
AWS News Blog
NISL@THU
NISL@THU
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
博客园 - 【当耐特】
P
Privacy International News Feed
I
Intezer
V
Vulnerabilities – Threatpost
The GitHub Blog
The GitHub Blog
L
LINUX DO - 最新话题
S
Schneier on Security
C
CXSECURITY Database RSS Feed - CXSecurity.com
小众软件
小众软件
博客园 - 聂微东
V2EX - 技术
V2EX - 技术
W
WeLiveSecurity
Security Latest
Security Latest
PCI Perspectives
PCI Perspectives
The Hacker News
The Hacker News
T
Threatpost
C
Check Point Blog
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Latest news
Latest news
L
LINUX DO - 热门话题
J
Java Code Geeks
A
Arctic Wolf
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
T
Troy Hunt's Blog

WhatIs

Strategic IT outlook: Tech conferences and events calendar | TechTarget 8 AI use cases in manufacturing Enterprises are making an AI native transformation Zero trust in the IT ops stack: Securing hybrid workloads How algorithmic value sets enhance clinical decision-making Top methods for collecting customer feedback Build a data governance team that delivers results How to calculate the total cost of ownership of ERP software Communities call for transparency in AI data center deals Scalable IT infrastructure: Balancing speed with stability How health systems are tackling 'Kill the Clipboard' obstacles Understanding the science behind AI-based hiring assessments Tape's strategic role in modern data protection How to choose an HR software system in 2026: A complete guide The UC stack gets the policy job Top zero-trust use cases in the enterprise 13 top IT infrastructure conferences in 2026 SNMP vs. CMIP: What's the difference? 3 essential network analytics use cases AI Security Risks Force CIOs to Rethink Strategy Red Hat Summit 2026 news and conference guide | TechTarget What is HR technology (human resources tech)? Understand, optimize and track customer journey touchpoints Should IT use Apple Business Manager without MDM? Build and organize an effective machine learning team The storage modernization imperative in a fast-changing IT landscape Procurement automation use cases for CSCOs to consider 3 steps for health system leaders to drive patient safety culture What is DevOps? Meaning, methodology and guide Enterprises Face New Storage Bottlenecks as AI Grows A guide to Intune Suite licensing for endpoint management Epic controls 42% of the US EHR market. Does that help or hurt interoperability? SAP Sapphire 2026 news, trends and analysis | TechTarget How to develop a data governance strategy: 7 key steps 12 generative AI tools for marketing and sales teams Top 9 smart contract platforms to consider in 2026 Top 8 e-signature software providers for 2026 Rise with SAP vs. S/4HANA Cloud: What are the differences? How businesses use KPIs to measure AI's performance 5 clues your network has shadow AI How do digital signatures work? Collaboration security and governance must be proactive Compare SAP greenfield vs. brownfield approach for S/4HANA Merck, Home Depot tap Gemini Enterprise for AI agent development Rural challenges may dampen digital healthcare's potential Build an ethical AI framework: 12 top resources The great workload reshuffle: Choices for AI and analytics How to remove a device from Intune enrollment Cisco unveils quantum network advancements 3 BYOD security risks and how to prevent them 10 of the top carbon accounting software 8 trends powering machine learning's dynamic new roles Network engineers must take the lead to push DDI to the cloud How does Microsoft 365 Copilot pricing and licensing work? ONC highlights behavioral health EHR adoption trends, data exchange barriers LLMs struggle with clinical reasoning, study finds Democratizing AI in business: The good, bad and ugly What can organizations do to address BYOD privacy concerns? Fix the service path before you optimize it with AI How AI reshapes upselling in customer experience platforms When collaboration starts becoming operational drag Balancing health AI management with growing vendor sprawl Career cure for AI phobia: Be a beekeeper, not a worker bee 16 top applicant tracking systems for 2026 How a rural community hospital deploys AI to detect heart disease 8 examples of document version control Guide to 30+ sustainability certifications for professionals AI agents are only as smart as the data that feeds them AI could earn trust in transactional work first How to fix keyboard connection issues on a remote desktop How to add and enroll devices to Microsoft Intune 11 DevSecOps best practices to prioritize in 2026 6 key components of a successful data strategy How to enable Copilot in Microsoft 365: A step-by-step guide What CIOs need to know about Meta's proposed CEO AI agent Top AI recruiting tools and software of 2026 How contact centers detect and prevent fraud 10 essential skills for modern contact center agents Beyond the chatbot: Engineering the agentic enterprise AI in business intelligence: How to manage it effectively Why legacy networks are a growing liability Failure is an option as an IT leadership tool How HR can create a successful change management strategy HR AI is becoming a change management story Digital transformation: Balancing speed and governance RSAC 2026 Conference: Key news and industry analysis | TechTarget 8 best practices for a bulletproof IAM strategy 5 customer journey phases businesses should understand 12 top HR software and tool options to consider in 2025 6 contact center trends shaping the future of customer service Contact center monitoring best practices for CX leaders Cloud vs. local backup: Which is right for your organization? 6 steps for when remote desktop credentials are not working How governance maturity affects M&A integration outcomes Inside the push to turn AI agents into suite functionality How should contact centers use AI today? Accenture global health lead on scaling AI in healthcare with governance and intent 10 best free DevOps certifications and training courses in 2026 What is compensation management? What CIOs must know about bossware strategy
Rewrites needed as patients say mental health chatbots are judgmental | TechTarget
Sara Heath · 2026-06-17 · via WhatIs

Users perceive judgment from mental health chatbots, sparking some researchers to call for messaging tweaks before the tools reach their full potential.

Can a chatbot be judgmental? For Ryan Raimi, a researcher from the University of Texas at Dallas, that thought should have been impossible. And yet, after investigating patient perceptions of mental health chatbots, that sentiment became apparent.

That's a setback for AI optimists who believe the technology can help expand patient access to mental healthcare.

Indeed, mental healthcare access leaves much to be desired. According to the National Association on Mental Illness, only 52.1% of adults with mental illness received treatment in 2024. For those with serious mental illness, that figure was 70.8%. Meanwhile, about half of kids aged 6-17 went without needed mental healthcare in 2024.

AI chatbots have been cautiously viewed as one solution to the nation's healthcare access problems, and mental healthcare is no different. According to Raimi, chatbots are inexpensive to deploy. And because they are available around the clock and even internationally, they could be helpful for folks who never dreamed of accessing therapy.

Perhaps most importantly, AI chatbots could deliver stigma-free mental healthcare simply by virtue of being a machine instead of a human. That's a strong argument for chatbots, given 84% of U.S. adults still think the term "mental illness" carries stigma, per the American Psychological Association.

"It's all about the fear of being judged by another human being," Raimi noted. "But then what if on the other side of the table, it's not a human, it's a machine, which is inherently incapable of judging you."

Raimi and his team got to work assessing the feasibility -- plus safety and efficacy -- of deploying mental health chatbots, foremost by examining the role of trust. Trust is a key component of any healthcare interaction, but especially mental healthcare. If patients can trust that a mental health chatbot won't judge them, they might be willing to use it.

But what the research team found was unexpected.

Can mental health chatbots be judgmental?

Raimi and his colleagues showed nearly 2,000 study participants a few text-based messages exchanged between a therapist and a hypothetical client experiencing depression, they wrote in the journal MIS Quarterly. The participants were split into four groups: two were told the therapist was a human, and the others were told it was a chatbot.

Despite the messages being identical, the study participants who learned the messages were sent by a mental health chatbot overwhelmingly perceived them as judgmental.

But what, exactly, makes a chatbot incapable of feeling more judgmental? Upon further qualitative probing, Raimi found it's the very fact that it's a chatbot, not a human, that isolates users.

For example, because mental health chatbots are machines, they have no real-world experience to draw from when conversing with a user. When a client or a patient speaks with a human therapist, the therapist can contextualize what it means to feel "down" or "anxious" because they've lived in the real world.

Likewise, a human therapist has understanding and knows what it means to feel socially isolated.

All of that affects the mental health chatbot's ability to validate the user, which is a significant shortcoming when it comes to therapy and mental healthcare.

 "One of the reasons people told us they reach out to human providers in the first place is just to be heard -- not necessarily to find a solution, but just to talk to someone and feel validated and heard," Raimi explained.

But when a chatbot says, "It must be difficult to feel socially isolated," it rings hollow.

Still, Raimi maintains that mental health chatbots hold great promise in a world where such care is often inaccessible. Many patients agree. Earlier this year, Cognitive FX and Pollfish found that about a third of adults are using AI for mental health advice, indicating growing popularity. Among adolescents, that figure is about a fifth, per June data from RAND Corporation.

However, as these tools proliferate, it will be essential for AI developers to intentionally design them to help, not isolate, users.

Rethinking mental health chatbot prompt engineering

According to Raimi, improving the efficacy of mental health chatbots is a matter of prompt engineering.

Foremost, there are the tweaks necessary to ensure AI is deployed safely and ethically, he acknowledged.

Mental health chatbots should be engineered to only interact with users with a low risk profile and to refer higher-risk patients to a mental health professional. Designers should also consider the psychotherapy approach the chatbot will employ and any necessary guardrails to prevent patients from breaking out of any "safety loops" built into the AI.

But to cultivate a trusting, judgment-free relationship with users, mental health chatbots also need to retool their responses. Specifically, Raimi suggested developers remove the proverbial "I know how you feel" responses from the bots -- because they don't know.

Instead, bots might say, "I acknowledge that I have not experienced what you just described, but based on others' experiences, here is a potential solution."

This might require developers to consider training AI models on different types of psychotherapy, such as Freudian or Kohutian approaches that de-center empathy, Raimi recommended.

Raimi also suggested that mental health chatbots be designed to do exactly what LLMs have proven very adept at: aggregating relevant information for end users.

In this case, a mental health chatbot could crawl the internet for other information about how someone dealt with a similar situation or feeling the current user expressed. For example, the chatbot could provide breakup advice from online forums like Reddit or the experiences of other users, while de-identifying any information.

The idea is in its nascency, Raimi stressed, and it could use some fine-tuning. However, it could be an effective way for chatbots to convey empathy and real-world experience without being inauthentic.

"It's really promising in terms of research, implementation, real-world policy and chatbot design implementation and operationalization, but it's in an infancy state," Raimi concluded. "We need more time as researchers and scholars. But I wholeheartedly believe that in two to three years, we will have made significant progress."

Sara Heath is an executive editor at Xtelligent Healthcare Media, where she covers patient engagement, healthcare policy and health IT.

Dig Deeper on Patient engagement technology