Welcome to the Nexus of Ethics, Psychology, Morality, Philosophy and Health Care

Welcome to the nexus of ethics, psychology, morality, technology, health care, and philosophy

Friday, July 10, 2026

GPT-4 generated psychological reports in psychodynamic perspective

Kim, N., Lee, J., et al. (2025).
Frontiers in psychiatry, 16, 1473614.

Abstract

Background: Recently, there have been active proposals on how to utilize large language models (LLMs) in the fields of psychiatry and counseling. It would be interesting to develop programs with LLMs that generate psychodynamic assessments to help individuals gain insights about themselves, and to evaluate the features of such services. However, studies on this subject are rare. This pilot study aims to evaluate quality, risk of hallucination (incorrect AI-generated information), and client satisfaction with psychodynamic psychological reports generated by GPT-4.

Methods: The report comprised five components: psychodynamic formulation, psychopathology, parental influence, defense mechanisms, and client strengths. Participants were recruited from individuals distressed by repetitive interpersonal issues. The study was conducted in three steps: 1) Questions provided to participants, designed to create psychodynamic formulations: 14 questions were generated by GPT for inferring psychodynamic formulations, while 6 fixed questions focused on the participants’ relationship with their parents. A total of 20 questions were provided. Using participants’ responses to these questions, GPT-4 generated the psychological reports. 2) Seven professors of psychiatry from different university hospitals evaluated the quality and risk of hallucinations in the psychological reports by reading the reports only, without meeting the participants. This quality assessment compared the psychological reports generated by GPT-4 with those inferred by the experts. 3) Participants evaluated their satisfaction with the psychological reports. All assessments were conducted using self-report questionnaires based on a Likert scale developed for this study.

Results: A total of 10 participants were recruited, and the average age was 32 years. The median response indicated that quality of all five components of the psychological report was similar to the level inferred by the experts. The risk of hallucination was assessed as ranging from unlikely to minor. According to the median response in the satisfaction evaluation, the participants agreed that the report is clearly understandable, insightful, credible, useful, satisfying, and recommendable.

Conclusion: This study suggests the possibility that artificial intelligence could assist users by providing psychodynamic interpretations.

Here are some thoughts:

This study tested whether GPT-4 could write useful psychodynamic reports for people with relationship problems. Experts rated the AI reports as similar in quality to what a human expert would write. The risk of harmful errors was low, and the clients found the reports insightful and helpful. However, the study was small and had limitations, including the risk that the AI might make an insensitive or upsetting interpretation. The main takeaway is that AI shows promise as a support tool for mental health, but human oversight is still essential.

Wednesday, July 8, 2026

Automation bias and assistive AI.

Khera, R., Simon, M. A., & Ross, J. S. (2023).
JAMA, 330(23), 2255. 

At the point of care, artificial intelligence (AI) algorithms have been developed to augment diagnostic decisions and suggest appropriate care pathways, by leveraging complex information in a patient’s electronic health record, such as imaging, documentation, and diagnostic testing. With an increasing number of technologies integrated into the diagnosis, management, and even treatment of patients, the promise of AI to enhance accuracy, reduce errors, reduce clinician burnout, and improve clinical workflows may appear imminent.

MostAI algorithms aredesigned tobe assistive technologies—augmenting, not replacing, clinicians’
decision-making. AI models are imperfect and lack the broader clinical context that may be relevant for patient care. The expectation is that the diagnostic performance of clinicians supported by AI will exceed those of clinicians without such support.


Here are some thoughts:

This article highlights a critical problem with artificial intelligence in medicine: automation bias. This is when clinicians trust an AI’s recommendation too much, even when it is clearly wrong or contradicts their own judgment. The authors show that biased AI models can significantly lower the quality of patient care, and simply explaining how the AI works does not fix the issue. Clinicians, often working under time pressure, may defer to the tool instead of using their own expertise, which can lead to direct patient harm.

The key takeaway is that keeping a human “in the loop” is not enough to ensure safety. Current regulatory approaches focus too much on the AI’s technical accuracy and not enough on how real clinicians actually use these tools in practice. The authors argue that better training, higher safety standards, and truly interpretable AI are needed. Without these changes, the excitement around medical AI risks overshadowing its primary goal: improving patient care, not undermining it.

Monday, July 6, 2026

Exploring the frontiers of LLMs in psychological applications: a comprehensive review.

Ke, L., Tong, S., Cheng, P., & Peng, K. (2025).
Artificial Intelligence Review, 58(10).

Abstract

This review explores the frontiers of large language models (LLMs) in psychological applications. Psychology has undergone several theoretical changes, and the current use of artificial intelligence (AI) and machine learning, particularly LLMs, promises to open up new research directions. We aim to provide a detailed exploration of how LLMs are transforming psychological research. We discuss the impact of LLMs across various branches of psychology—including cognitive and behavioral, clinical and counseling, educational and developmental, and social and cultural psychology—highlighting their ability to model patterns, cognition, and behavior similar to those observed in humans. Furthermore, we explore the ability of such models to generate coherent, contextually relevant text, offering innovative tools for literature reviews, hypothesis generation, experimental designs, experimental subjects, and data analysis in psychology. We emphasize the importance of addressing technical and ethical challenges, including data privacy, the ethics of using LLMs in psychological research, and the need for a deeper understanding of these models’ limitations. Researchers should use LLMs responsibly in psychological studies, adhering to ethical standards and considering the potential consequences of deploying these technologies in sensitive areas. Overall, this review provides a comprehensive overview of the current state of LLMs in psychology, exploring the potential benefits and challenges. We hope it can serve as a call to action for researchers to responsibly leverage LLMs’ advantages while addressing the associated risks.

Here is a great quote from the article: “LLM output should not be mistaken for the presence of thought but instead viewed as complex pattern matching based on probabilistic modeling.”

Here are some thoughts:

This review provides a timely and comprehensive framework for understanding how LLMs are transforming psychological research, organized around Newell's hierarchical timescales of human behavior. The authors strike an excellent balance between enthusiasm for LLMs' emergent abilities, such as analogical reasoning and emotion recognition, and a critical awareness of their fundamental limitations, including the lack of genuine understanding, persistent biases toward WEIRD populations, and risks in clinical applications like suicide risk assessment. The paper is particularly strong in its systematic presentation of empirical findings across cognitive, clinical, educational, and social psychology, supported by clear tables that make specific applications and results easily accessible to researchers. 

While the review covers LLMs as both research tools and simulated subjects, it could further explore the epistemological risks of circular validation where LLMs are used to study behaviors they merely replicate from training data. Additionally, greater attention to open source models and the inherent constraints of transformer architectures for real time or developmental processes would strengthen future work. Overall, this article serves as an essential resource for psychologists seeking to responsibly integrate LLMs into their research, offering both practical guidance and ethical guardrails without succumbing to technological hype.

Friday, July 3, 2026

Responsible Use of AI in Assessment

American Psychological Association
The information is here.

Summary

Artificial intelligence (AI) is increasingly used in psychological and educational assessment for tasks like scoring, summarizing, reporting, and pattern recognition. Thoughtful use of AI can improve efficiency, consistency, and service access. However, AI systems may introduce bias, errors, and lack transparency, so their risks must be carefully considered due to the significant impact of assessment decisions. While traditional considerations and evaluation criteria for practicing and researching assessment remain relevant, the integration of AI introduces unique factors that must be understood and addressed to ensure validity, reliability, fairness, and transparency.

To address these concerns, the members of APA’s Committee on Psychological Tests and Assessment (CPTA) have developed a concisely presented, comprehensive document that delves into the ethical and practical considerations for the use of AI in assessment across domains (e.g., clinical, I/O, school) and situations (e.g., employment testing, clinical evaluations). The document identifies considerations pertinent at specific decision-making junctures (e.g., tool selection, administration/delivery, scoring, interpretation, reporting) as well as considerations that apply across all assessment activities. The intended audience for this document is psychologists, including but not limited to health service psychologists and psychologists working in industry, academia, and public service positions as well as students of psychology. Although not the intended audience, this document may also serve as a resource for consumers of psychology and the public.

Principles for responsible AI use in assessment

Eight key areas to consider whenever AI is used in psychological assessment:
  • Transparency and accountability
  • Bias and fairness
  • Privacy and confidentiality
  • Informed consent
  • Competence and training
  • Human oversight
  • Impact on applied and clinical work
  • Continuous improvement

Wednesday, July 1, 2026

Principled by Design: Ethical Decision-making with Integrity

Gavazzi, J. (2026).
www.ethicalpsychology.com

This article is self-published for inclusion in a home study offered through the Pennsylvania Psychological Association. The home study promotes a structured approach to ethical decision-making, designed to support self-reflective practice.

Clinical Impact Statement

This article offers psychologists a practical, principle-based framework for working through ethical dilemmas in clinical practice. By treating autonomy, beneficence, nonmaleficence, justice, and fidelity as competing obligations to be specified and balanced rather than rules to be memorized, the framework helps clinicians reason transparently through situations in which the Ethics Code alone does not provide clear direction. It supports more defensible decisions, stronger therapeutic relationships, and the kind of reflective practice that treats ethics as an aspiration rather than a minimum standard.


Monday, June 29, 2026

AI generates covertly racist decisions about people based on their dialect.

Hofmann, V., et al. (2024).
Nature, 633(8028), 147–154.

Abstract

Hundreds of millions of people now interact with language models, with uses ranging from help with writing to informing hiring decisions. However, these language models are known to perpetuate systematic racial prejudices, making their judgements biased in problematic ways about groups such as African Americans. Although previous research has focused on overt racism in language models, social scientists have argued that racism with a more subtle character has developed over time, particularly in the United States after the civil rights movement. It is unknown whether this covert racism manifests in language models. Here, we demonstrate that language models embody covert racism in the form of dialect prejudice, exhibiting raciolinguistic stereotypes about speakers of African American English (AAE) that are more negative than any human stereotypes about African Americans ever experimentally recorded. By contrast, the language models’ overt stereotypes about African Americans are more positive. Dialect prejudice has the potential for harmful consequences: language models are more likely to suggest that speakers of AAE be assigned less-prestigious jobs, be convicted of crimes and be sentenced to death. Finally, we show that current practices of alleviating racial bias in language models, such as human preference alignment, exacerbate the discrepancy between covert and overt stereotypes, by superficially obscuring the racism that language models maintain on a deeper level. Our findings have far-reaching implications for the fair and safe use of language technology.

Here are some thoughts:

This research article demonstrates that artificial intelligence language models exhibit covert racism through deep-seated dialect prejudice against speakers of African American English. By evaluating language variations, the authors found that these models attach negative stereotypes to African American English that are more severe than any human stereotypes ever recorded experimentally, even while their overt statements about Black individuals appear positive. For psychologists, this study is highly important because it reveals how systemic racism and implicit bias can be stealthily automated and amplified within technology. It underscores that human preference training merely masks superficial bias while leaving harmful, underlying prejudices fully intact. Insightfully, the findings warn that relying on artificial intelligence for clinical diagnostics, forensic evaluations, or employment screening can lead to discriminatory outcomes, such as harsher legal judgments or lower prestige job recommendations. Psychologists must therefore spearhead critical evaluations of these tools to ensure digital assessments do not reinforce historical inequities.

Friday, June 26, 2026

The Artificial Third: A Broad View of the Effects of Introducing Generative Artificial Intelligence on Psychotherapy

Haber, Y., et al. (2024).
JMIR Mental Health, 11, e54781.

Abstract

This paper explores a significant shift in the field of mental health in general and psychotherapy in particular following generative artificial intelligence’s new capabilities in processing and generating humanlike language. Following Freud, this lingo-technological development is conceptualized as the “fourth narcissistic blow” that science inflicts on humanity. We argue that this narcissistic blow has a potentially dramatic influence on perceptions of human society, interrelationships, and the self. We should, accordingly, expect dramatic changes in perceptions of the therapeutic act following the emergence of what we term the artificial third in the field of psychotherapy. The introduction of an artificial third marks a critical juncture, prompting us to ask the following important core questions that address two basic elements of critical thinking, namely, transparency and autonomy: (1) What is this new artificial presence in therapy relationships? (2) How does it reshape our perception of ourselves and our interpersonal dynamics? and (3) What remains of the irreplaceable human elements at the core of therapy? Given the ethical implications that arise from these questions, this paper proposes that the artificial third can be a valuable asset when applied with insight and ethical consideration, enhancing but not replacing the human touch in therapy.

Here are some thoughts:

This article conceptualizes the rise of generative artificial intelligence as the fourth narcissistic blow to human identity by challenging our unique monopoly over language. The authors introduce the concept of the artificial third to describe how technology enters the therapeutic space, transforming traditional interpersonal relationships. For psychologists, this paper is important because it shifts the conversation from technical efficiency to fundamental existential and ethical questions about autonomy, transparency, and the irreplaceable nature of human empathy. Insightfully, the study highlights that while artificial intelligence can process text, it lacks a true mind or subjective lived experience. Psychologists must therefore understand that this technology cannot replace the profound, nonverbal, emotional resonance of human connection. Ultimately, the article serves as a critical warning that embracing technology without maintaining strict ethical boundaries risks depersonalizing the therapeutic bond and undermining the very foundation of psychological healing.

Wednesday, June 24, 2026

A foundation model of vision, audition, and language for in-silico neuroscience

d’Ascoli, S., Rapin, J. et al. (2026)
Meta

Abstract

Cognitive neuroscience is fragmented into specialized models, each tailored to specific experimental paradigms, hence preventing a unified model of cognition in the human brain. Here, we introduce TRIBE v2, a tri-modal (video, audio and language) foundation model capable of predicting human brain activity in a variety of naturalistic and experimental conditions. Leveraging a unified dataset of over 1,000 hours of fMRI across 720 subjects, we demonstrate that our model accurately predicts high-resolution brain responses for novel stimuli, tasks and subjects, superseding traditional linear encoding models, delivering several-fold improvements in accuracy. Critically, TRIBE v2 enables in silico experimentation: tested on seminal visual and neuro-linguistic paradigms, it recovers a variety of results established by decades of empirical research. Finally, by extracting interpretable latent features, TRIBE v2 reveals the fine-grained topography of multisensory integration. These results establish artificial intelligence as a unifying framework for exploring the functional organization of the human brain.


Here are some thoughts:

This paper matters to psychologists because it introduces a single AI model capable of predicting brain responses across vision, language, and auditory processing simultaneously. Rather than relying on separate, task-specific models, TRIBE v2 offers a unified framework for understanding how the brain integrates multisensory information. It can replicate classic experimental findings without running new studies, potentially reducing the cost and time of psychological research. Its ability to generalize across hundreds of subjects also opens new possibilities for studying individual differences in cognitive and neural functioning.

Monday, June 22, 2026

Bio-Quantum Hybrid Linear Regression: A Novel Approach Combining Organoids Intelligence and Quantum Computing

Triana, H. (2026).
Research Gate

Abstract

This paper introduces a novel Bio-Quantum Hybrid Linear Regression framework that integrates Organoids Intelligence (OI) with quantum computing operations to create a unified machine learning model. The proposed architecture combines two complementary computational paradigms: biological neural dynamics simulated through Brian2 [1], which models membrane potential evolution using differential equations, and quantum superposition operations implemented via Qiskit, which encode input values into qubit states through Y-rotation gates. The hybrid model performs linear regression by linearly combining outputs from both OI and quantum computing operations using learnable weights and a bias term, as formulated in yi = wqc·fqc(xi) + wOI·fOI (xi) + b. Experimental evaluation on synthetic datasets demonstrates the feasibility of integrating biological simulation  and quantum computing for regression tasks, while revealing important insights into the model’s behavior, limitations, and optimization requirements. The loss trajectory analysis shows increasing prediction errors without gradient-based optimization, highlighting the need for adaptive learning mechanisms. Despite current limitations, this work establishes a foundational framework for hybrid intelligence systems that leverage the complementary strengths of biological adaptive computation and quantum parallel processing capabilities. The paper also comprehensively discusses hardware and algorithmic limitations in both quantum computing (decoherence, qubit scalability, error correction) and organoid intelligence (scalability constraints, biological variability, ethical considerations), providing a roadmap for future research directions in hybrid computational intelligence that may transcend the constraints of traditional machine learning methodologies.


Here are some thoughts:

In essence, this paper represents a highly speculative, "blue-sky" proof of concept trying to answer a fundamental question: Can we plug a simulated biological brain and a quantum computer into the same mathematical equation?

While traditional AI relies entirely on silicon-based classical computing, the author is looking ahead to a distant future where we might outgrow standard microchips. By demonstrating that outputs from a simulated biological neuron and a simulated quantum qubit can be combined into a single formula, the paper attempts to lay a conceptual baseline for hybrid intelligence: systems that could theoretically pair the rapid, parallel problem-solving of quantum mechanics with the hyper-efficient, self-organizing adaptability of organic biology.  

However, the practical reality of the paper is a stark reminder of how far away that future is. Because the model lacked a basic learning mechanism to correct its mistakes, and because combining two highly unstable, noisy mediums (quantum states and biological cells) creates immense chaotic interference, the model completely failed to solve a basic math problem. Ultimately, the paper means that while bridging these two futuristic computational substrates is mathematically imaginable on paper, actually getting them to work together constructively is blocked by massive, unresolved engineering, algorithmic, and ethical barriers on both sides.