Multilingual Virtual Healthcare Assistant

ABSTRACT This study proposes a virtual healthcare assistant framework designed to provide support in multiple languages for efficient and accurate healthcare assistance. The system employs a transformer model to process sophisticated, multilingual user inputs and gain improved contextual understandi...

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Main Authors: Geetika Munjal, Piyush Agarwal, Lakshay Goyal, Nandy Samiran
Format: Article
Language:English
Published: Wiley 2025-08-01
Series:Health Care Science
Subjects:
Online Access:https://doi.org/10.1002/hcs2.70031
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author Geetika Munjal
Piyush Agarwal
Lakshay Goyal
Nandy Samiran
author_facet Geetika Munjal
Piyush Agarwal
Lakshay Goyal
Nandy Samiran
author_sort Geetika Munjal
collection DOAJ
description ABSTRACT This study proposes a virtual healthcare assistant framework designed to provide support in multiple languages for efficient and accurate healthcare assistance. The system employs a transformer model to process sophisticated, multilingual user inputs and gain improved contextual understanding compared to conventional models, including long short‐term memory (LSTM) models. In contrast to LSTMs, which sequence processes information and may experience challenges with long‐range dependencies, transformers utilize self‐attention to learn relationships among every aspect of the input in parallel. This enables them to execute more accurately in various languages and contexts, making them well‐suited for applications such as translation, summarization, and conversational Comparative evaluations revealed the superiority of the transformer model (accuracy rate: 85%) compared with that of the LSTM model (accuracy rate: 65%). The experiments revealed several advantages of the transformer architecture over the LSTM model, such as more effective self‐attention, the ability for models to work in parallel with each other, and contextual understanding for better multilingual compatibility. Additionally, our prediction model exhibited effectiveness for disease diagnosis, with accuracy of 85% or greater in identifying the relationship between symptoms and diseases among different demographics. The system provides translation support from English to other languages, with conversion to French (Bilingual Evaluation Understudy score: 0.7), followed by English to Hindi (0.6). The lowest Bilingual Evaluation Understudy score was found for English to Telugu (0.39). This virtual assistant can also perform symptom analysis and disease prediction, with output given in the preferred language of the user.
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spelling doaj-art-cb81f2a2a6b0443ca9aa379b0414cc502025-08-22T12:39:53ZengWileyHealth Care Science2771-17572025-08-014428128810.1002/hcs2.70031Multilingual Virtual Healthcare AssistantGeetika Munjal0Piyush Agarwal1Lakshay Goyal2Nandy Samiran3Amity School of Engineering and Technology Noida IndiaAmity School of Engineering and Technology Noida IndiaAmity School of Engineering and Technology Noida IndiaAmity School of Engineering and Technology Noida IndiaABSTRACT This study proposes a virtual healthcare assistant framework designed to provide support in multiple languages for efficient and accurate healthcare assistance. The system employs a transformer model to process sophisticated, multilingual user inputs and gain improved contextual understanding compared to conventional models, including long short‐term memory (LSTM) models. In contrast to LSTMs, which sequence processes information and may experience challenges with long‐range dependencies, transformers utilize self‐attention to learn relationships among every aspect of the input in parallel. This enables them to execute more accurately in various languages and contexts, making them well‐suited for applications such as translation, summarization, and conversational Comparative evaluations revealed the superiority of the transformer model (accuracy rate: 85%) compared with that of the LSTM model (accuracy rate: 65%). The experiments revealed several advantages of the transformer architecture over the LSTM model, such as more effective self‐attention, the ability for models to work in parallel with each other, and contextual understanding for better multilingual compatibility. Additionally, our prediction model exhibited effectiveness for disease diagnosis, with accuracy of 85% or greater in identifying the relationship between symptoms and diseases among different demographics. The system provides translation support from English to other languages, with conversion to French (Bilingual Evaluation Understudy score: 0.7), followed by English to Hindi (0.6). The lowest Bilingual Evaluation Understudy score was found for English to Telugu (0.39). This virtual assistant can also perform symptom analysis and disease prediction, with output given in the preferred language of the user.https://doi.org/10.1002/hcs2.70031BLEU scoreencoder‐only transformer modelhealthcare chatbotLSTMNLPvirtual healthcare
spellingShingle Geetika Munjal
Piyush Agarwal
Lakshay Goyal
Nandy Samiran
Multilingual Virtual Healthcare Assistant
Health Care Science
BLEU score
encoder‐only transformer model
healthcare chatbot
LSTM
NLP
virtual healthcare
title Multilingual Virtual Healthcare Assistant
title_full Multilingual Virtual Healthcare Assistant
title_fullStr Multilingual Virtual Healthcare Assistant
title_full_unstemmed Multilingual Virtual Healthcare Assistant
title_short Multilingual Virtual Healthcare Assistant
title_sort multilingual virtual healthcare assistant
topic BLEU score
encoder‐only transformer model
healthcare chatbot
LSTM
NLP
virtual healthcare
url https://doi.org/10.1002/hcs2.70031
work_keys_str_mv AT geetikamunjal multilingualvirtualhealthcareassistant
AT piyushagarwal multilingualvirtualhealthcareassistant
AT lakshaygoyal multilingualvirtualhealthcareassistant
AT nandysamiran multilingualvirtualhealthcareassistant