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ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance

Virtual Mental Health Assistants (VMHAs) are utilized in health care to provide patient services such as counseling and suggestive care. They are not used for patient diagnostic assistance because they cannot adhere to safety constraints and specialized clinical process knowledge (ProKnow) used to o...

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Autores principales: Roy, Kaushik, Gaur, Manas, Soltani, Misagh, Rawte, Vipula, Kalyan, Ashwin, Sheth, Amit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9869802/
https://www.ncbi.nlm.nih.gov/pubmed/36700134
http://dx.doi.org/10.3389/fdata.2022.1056728
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author Roy, Kaushik
Gaur, Manas
Soltani, Misagh
Rawte, Vipula
Kalyan, Ashwin
Sheth, Amit
author_facet Roy, Kaushik
Gaur, Manas
Soltani, Misagh
Rawte, Vipula
Kalyan, Ashwin
Sheth, Amit
author_sort Roy, Kaushik
collection PubMed
description Virtual Mental Health Assistants (VMHAs) are utilized in health care to provide patient services such as counseling and suggestive care. They are not used for patient diagnostic assistance because they cannot adhere to safety constraints and specialized clinical process knowledge (ProKnow) used to obtain clinical diagnoses. In this work, we define ProKnow as an ordered set of information that maps to evidence-based guidelines or categories of conceptual understanding to experts in a domain. We also introduce a new dataset of diagnostic conversations guided by safety constraints and ProKnow that healthcare professionals use (ProKnow-data). We develop a method for natural language question generation (NLG) that collects diagnostic information from the patient interactively (ProKnow-algo). We demonstrate the limitations of using state-of-the-art large-scale language models (LMs) on this dataset. ProKnow-algo incorporates the process knowledge through explicitly modeling safety, knowledge capture, and explainability. As computational metrics for evaluation do not directly translate to clinical settings, we involve expert clinicians in designing evaluation metrics that test four properties: safety, logical coherence, and knowledge capture for explainability while minimizing the standard cross entropy loss to preserve distribution semantics-based similarity to the ground truth. LMs with ProKnow-algo generated 89% safer questions in the depression and anxiety domain (tested property: safety). Further, without ProKnow-algo generations question did not adhere to clinical process knowledge in ProKnow-data (tested property: knowledge capture). In comparison, ProKnow-algo-based generations yield a 96% reduction in our metrics to measure knowledge capture. The explainability of the generated question is assessed by computing similarity with concepts in depression and anxiety knowledge bases. Overall, irrespective of the type of LMs, ProKnow-algo achieved an averaged 82% improvement over simple pre-trained LMs on safety, explainability, and process-guided question generation. For reproducibility, we will make ProKnow-data and the code repository of ProKnow-algo publicly available upon acceptance.
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spelling pubmed-98698022023-01-24 ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance Roy, Kaushik Gaur, Manas Soltani, Misagh Rawte, Vipula Kalyan, Ashwin Sheth, Amit Front Big Data Big Data Virtual Mental Health Assistants (VMHAs) are utilized in health care to provide patient services such as counseling and suggestive care. They are not used for patient diagnostic assistance because they cannot adhere to safety constraints and specialized clinical process knowledge (ProKnow) used to obtain clinical diagnoses. In this work, we define ProKnow as an ordered set of information that maps to evidence-based guidelines or categories of conceptual understanding to experts in a domain. We also introduce a new dataset of diagnostic conversations guided by safety constraints and ProKnow that healthcare professionals use (ProKnow-data). We develop a method for natural language question generation (NLG) that collects diagnostic information from the patient interactively (ProKnow-algo). We demonstrate the limitations of using state-of-the-art large-scale language models (LMs) on this dataset. ProKnow-algo incorporates the process knowledge through explicitly modeling safety, knowledge capture, and explainability. As computational metrics for evaluation do not directly translate to clinical settings, we involve expert clinicians in designing evaluation metrics that test four properties: safety, logical coherence, and knowledge capture for explainability while minimizing the standard cross entropy loss to preserve distribution semantics-based similarity to the ground truth. LMs with ProKnow-algo generated 89% safer questions in the depression and anxiety domain (tested property: safety). Further, without ProKnow-algo generations question did not adhere to clinical process knowledge in ProKnow-data (tested property: knowledge capture). In comparison, ProKnow-algo-based generations yield a 96% reduction in our metrics to measure knowledge capture. The explainability of the generated question is assessed by computing similarity with concepts in depression and anxiety knowledge bases. Overall, irrespective of the type of LMs, ProKnow-algo achieved an averaged 82% improvement over simple pre-trained LMs on safety, explainability, and process-guided question generation. For reproducibility, we will make ProKnow-data and the code repository of ProKnow-algo publicly available upon acceptance. Frontiers Media S.A. 2023-01-09 /pmc/articles/PMC9869802/ /pubmed/36700134 http://dx.doi.org/10.3389/fdata.2022.1056728 Text en Copyright © 2023 Roy, Gaur, Soltani, Rawte, Kalyan and Sheth. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Big Data
Roy, Kaushik
Gaur, Manas
Soltani, Misagh
Rawte, Vipula
Kalyan, Ashwin
Sheth, Amit
ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title_full ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title_fullStr ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title_full_unstemmed ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title_short ProKnow: Process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
title_sort proknow: process knowledge for safety constrained and explainable question generation for mental health diagnostic assistance
topic Big Data
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9869802/
https://www.ncbi.nlm.nih.gov/pubmed/36700134
http://dx.doi.org/10.3389/fdata.2022.1056728
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