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 wellness


PeerCoPilot: A Language Model-Powered Assistant for Behavioral Health Organizations

Mo, Gao, Raman, Naveen, Chai, Megan, Peng, Cindy, Pagdon, Shannon, Jones, Nev, Shen, Hong, Swarbrick, Peggy, Fang, Fei

arXiv.org Artificial Intelligence

Behavioral health conditions, which include mental health and substance use disorders, are the leading disease burden in the United States. Peer-run behavioral health organizations (PROs) critically assist individuals facing these conditions by combining mental health services with assistance for needs such as income, employment, and housing. However, limited funds and staffing make it difficult for PROs to address all service user needs. To assist peer providers at PROs with their day-to-day tasks, we introduce PeerCoPilot, a large language model (LLM)-powered assistant that helps peer providers create wellness plans, construct step-by-step goals, and locate organizational resources to support these goals. PeerCoPilot ensures information reliability through a retrieval-augmented generation pipeline backed by a large database of over 1,300 vetted resources. We conducted human evaluations with 15 peer providers and 6 service users and found that over 90% of users supported using PeerCoPilot. Moreover, we demonstrated that PeerCoPilot provides more reliable and specific information than a baseline LLM. PeerCoPilot is now used by a group of 5-10 peer providers at CSPNJ, a large behavioral health organization serving over 10,000 service users, and we are actively expanding PeerCoPilot's use.


More Americans are turning to AI for health advice

FOX News

NVIDIA CEO and co-founder Jensen Huang commends President Donald Trump's A.I. agenda and outlines what the country's job future will look like on'Special Report.' Forget typing symptoms into a search bar. A growing number of Americans are now using artificial intelligence to manage their health and wellness. According to a nationwide survey of 2,000 U.S. adults, 35% report already relying on AI to understand and manage aspects of their well-being. From planning meals to getting fitness advice, AI is quickly moving from a futuristic concept to a daily health tool.


Equitable Access to Justice: Logical LLMs Show Promise

Kant, Manuj, Kant, Manav, Nabi, Marzieh, Carlson, Preston, Ma, Megan

arXiv.org Artificial Intelligence

Large language models (LLMs) hold great potential to improve access to justice. However, a major challenge in applying AI and LLMs in legal contexts, where consistency and reliability are crucial, is the need for System 2 reasoning. In this paper, we explore the integration of LLMs with logic programming to enhance their ability to reason, bringing their strategic capabilities closer to that of a skilled lawyer. Our objective is to translate laws and contracts into logic programs that can be applied to specific legal cases, with a focus on insurance contracts. We demonstrate that while GPT-4o fails to encode a simple health insurance contract into logical code, the recently released OpenAI o1-preview model succeeds, exemplifying how LLMs with advanced System 2 reasoning capabilities can expand access to justice.


WellDunn: On the Robustness and Explainability of Language Models and Large Language Models in Identifying Wellness Dimensions

Mohammadi, Seyedali, Raff, Edward, Malekar, Jinendra, Palit, Vedant, Ferraro, Francis, Gaur, Manas

arXiv.org Artificial Intelligence

Language Models (LMs) are being proposed for mental health applications where the heightened risk of adverse outcomes means predictive performance may not be a sufficient litmus test of a model's utility in clinical practice. A model that can be trusted for practice should have a correspondence between explanation and clinical determination, yet no prior research has examined the attention fidelity of these models and their effect on ground truth explanations. We introduce an evaluation design that focuses on the robustness and explainability of LMs in identifying Wellness Dimensions (WD). We focus on two mental health and well-being datasets: (a) Multi-label Classification-based MultiWD, and (b) WellXplain for evaluating attention mechanism veracity against expert-labeled explanations. The labels are based on Halbert Dunn's theory of wellness, which gives grounding to our evaluation. We reveal four surprising results about LMs/LLMs: (1) Despite their human-like capabilities, GPT-3.5/4 lag behind RoBERTa, and MedAlpaca, a fine-tuned LLM fails to deliver any remarkable improvements in performance or explanations. (2) Re-examining LMs' predictions based on a confidence-oriented loss function reveals a significant performance drop. (3) Across all LMs/LLMs, the alignment between attention and explanations remains low, with LLMs scoring a dismal 0.0. (4) Most mental health-specific LMs/LLMs overlook domain-specific knowledge and undervalue explanations, causing these discrepancies. This study highlights the need for further research into their consistency and explanations in mental health and well-being.


Development and Validation of a Machine Learning Algorithm for Clinical Wellness Visit Classification in Cats and Dogs

Szlosek, Donald, Coyne, Michael, Riggot, Julia, Knight, Kevin, McCrann, DJ, Kincaid, Dave

arXiv.org Artificial Intelligence

Early disease detection in veterinary care relies on identifying subclinical abnormalities in asymptomatic animals during wellness visits. This study introduces an algorithm designed to distinguish between wellness and other veterinary visits.The purpose of this study is to validate the use of a visit classification algorithm compared to manual classification of veterinary visits by three board-certified veterinarians. Using a dataset of 11,105 clinical visits from 2012 to 2017 involving 655 animals (85.3% canines and 14.7% felines) across 544 U.S. veterinary establishments, the model was trained using a Gradient Boosting Machine model. Three validators were tasked with classifying 400 visits, including both wellness and other types of visits, selected randomly from the same database used for initial algorithm training, aiming to maintain consistency and relevance between the training and application phases; visit classifications were subsequently categorized into "wellness" or "other" based on majority consensus among validators to assess the algorithm's performance in identifying wellness visits. The algorithm demonstrated a specificity of 0.94 (95% CI: 0.91 to 0.96), implying its accuracy in distinguishing non-wellness visits. The algorithm had a sensitivity of 0.86 (95% CI: 0.80 to 0.92), indicating its ability to correctly identify wellness visits as compared to the annotations provided by veterinary experts. The balanced accuracy, calculated as 0.90 (95% CI: 0.87 to 0.93), further confirms the algorithm's overall effectiveness. The algorithm exhibits strong specificity and sensitivity, ensuring accurate identification of a high proportion of wellness visits. Overall, this algorithm holds promise for advancing research on preventive care's role in subclinical disease identification, but prospective studies are needed for validation.


Guerrero: This California millionaire is peddling eternal life. Why do so many people believe him?

Los Angeles Times

For a moment, I fell under the spell of Bryan Johnson. Bathed in early-morning sunlight, the 46-year-old L.A.-based tech centimillionaire and longevity celebrity didn't look much younger than his age, although he claims to have the wrinkles of a 10-year-old and organs that are several years younger than his lifespan. We were standing at the Temescal Canyon trailhead in Pacific Palisades on Jan. 13, ahead of a Johnson-sponsored "Don't Die" hike, one of many organized across the world that day and the only one hosted by him. Of the 500-plus people who had RSVP'd for the L.A. event, about 200 showed up. Some had slept in their cars to make it.


Predicting suicidal behavior among Indian adults using childhood trauma, mental health questionnaires and machine learning cascade ensembles

Rao, Akash K, Trivedi, Gunjan Y, Trivedi, Riri G, Bajpai, Anshika, Chauhan, Gajraj Singh, Menon, Vishnu K, Soundappan, Kathirvel, Ramani, Hemalatha, Pandya, Neha, Dutt, Varun

arXiv.org Artificial Intelligence

Among young adults, suicide is India's leading cause of death, accounting for an alarming national suicide rate of around 16%. In recent years, machine learning algorithms have emerged to predict suicidal behavior using various behavioral traits. But to date, the efficacy of machine learning algorithms in predicting suicidal behavior in the Indian context has not been explored in literature. In this study, different machine learning algorithms and ensembles were developed to predict suicide behavior based on childhood trauma, different mental health parameters, and other behavioral factors. The dataset was acquired from 391 individuals from a wellness center in India. Information regarding their childhood trauma, psychological wellness, and other mental health issues was acquired through standardized questionnaires. Results revealed that cascade ensemble learning methods using a support vector machine, decision trees, and random forest were able to classify suicidal behavior with an accuracy of 95.04% using data from childhood trauma and mental health questionnaires. The study highlights the potential of using these machine learning ensembles to identify individuals with suicidal tendencies so that targeted interinterventions could be provided efficiently.


10 functional health predictions for 2024, according to a doctor and a wellness expert

FOX News

Fox News Flash top headlines are here. Check out what's clicking on Foxnews.com. Heading into a new year, we all want to stay as healthy as possible -- and some doctors believe that identifying and eliminating the issues that cause disease are critical actions to take, as opposed to treating and reacting to symptoms afterward. Known as "functional medicine," this alternative form of health care has drawn mixed reviews over the years. Some claim it lacks scientific evidence and that the treatments aren't standardized.


From Words and Exercises to Wellness: Farsi Chatbot for Self-Attachment Technique

Elahimanesh, Sina, Salehi, Shayan, Movahed, Sara Zahedi, Alazraki, Lisa, Hu, Ruoyu, Edalat, Abbas

arXiv.org Artificial Intelligence

In the wake of the post-pandemic era, marked by social isolation and surging rates of depression and anxiety, conversational agents based on digital psychotherapy can play an influential role compared to traditional therapy sessions. In this work, we develop a voice-capable chatbot in Farsi to guide users through Self-Attachment (SAT), a novel, self-administered, holistic psychological technique based on attachment theory. Our chatbot uses a dynamic array of rule-based and classification-based modules to comprehend user input throughout the conversation and navigates a dialogue flowchart accordingly, recommending appropriate SAT exercises that depend on the user's emotional and mental state. In particular, we collect a dataset of over 6,000 utterances and develop a novel sentiment-analysis module that classifies user sentiment into 12 classes, with accuracy above 92%. To keep the conversation novel and engaging, the chatbot's responses are retrieved from a large dataset of utterances created with the aid of Farsi GPT-2 and a reinforcement learning approach, thus requiring minimal human annotation. Our chatbot also offers a question-answering module, called SAT Teacher, to answer users' questions about the principles of Self-Attachment. Finally, we design a cross-platform application as the bot's user interface. We evaluate our platform in a ten-day human study with N=52 volunteers from the non-clinical population, who have had over 2,000 dialogues in total with the chatbot. The results indicate that the platform was engaging to most users (75%), 72% felt better after the interactions, and 74% were satisfied with the SAT Teacher's performance.


Raising the steaks! World's first AI-powered grill promises to cook the perfect steak in just 90 seconds - but it has an eye-watering $3,500 price tag

Daily Mail - Science & tech

Whether it's too tough, burnt to a crisp or just dripping in fat, cooking steak on the outside grill rarely does the cut of meat justice. Thankfully, a British firm has created an artificial intelligence (AI)-powered grill that it claims makes a perfect steak in just 90 seconds under controlled conditions. Perfecta, from Birmingham-based firm Seergrills, cooks the meat as it's held in place vertically, like a piece of bread in a toaster, with ultra-hot grills on either side. It has AI-powered software called NeuralFire, which relies on data gathered from sensors inside the machine and cooking preferences inputted by the user. However, if you want to get hold of one you'd better start saving - the device has an eye-watering $3,500 price tag.