| Literature DB >> 35039533 |
Vaibhav Gautam1, Ridam Pal2, Harsh Bandhey2, Lovedeep Singh Dhingra2,3, Vihaan Misra4, Himanshu Sharma5, Chirag Jain2, Kanav Bhagat2, Lajjaben Patel3, Mudit Agarwal3, Samprati Agrawal3, Rishabh Jalan2, Akshat Wadhwa2, Ayush Garg2, Yashwin Agrawal2, Rohan Pandey1, Bhavika Rana2, Ponnurangam Kumaraguru2, Tavpritesh Sethi6.
Abstract
The COVID-19 pandemic has revealed the power of internet disinformation in influencing global health. The deluge of information travels faster than the epidemic itself and is a threat to the health of millions across the globe. Health apps need to leverage machine learning for delivering the right information while constantly learning misinformation trends and deliver these effectively in vernacular languages in order to combat the infodemic at the grassroot levels in the general public. Our application, WashKaro, is a multi-pronged intervention that uses conversational Artificial Intelligence (AI), machine translation, and natural language processing to combat misinformation (NLP). WashKaro uses AI to provide accurate information matched against WHO recommendations and delivered in an understandable format in local languages. The primary aim of this study was to assess the use of neural models for text summarization and machine learning for delivering WHO matched COVID-19 information to mitigate the misinfodemic. The secondary aim of this study was to develop a symptom assessment tool and segmentation insights for improving the delivery of information. A total of 5026 people downloaded the app during the study window; among those, 1545 were actively engaged users. Our study shows that 3.4 times more females engaged with the App in Hindi as compared to males, the relevance of AI-filtered news content doubled within 45 days of continuous machine learning, and the prudence of integrated AI chatbot "Satya" increased thus proving the usefulness of a mHealth platform to mitigate health misinformation. We conclude that a machine learning application delivering bite-sized vernacular audios and conversational AI is a practical approach to mitigate health misinformation.Entities:
Mesh:
Year: 2022 PMID: 35039533 PMCID: PMC8764038 DOI: 10.1038/s41598-021-03869-6
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Proposed workflow of the App based upon Identify, Simplify, Amplify and Quantify framework as specified WHO’s EPI-WIN strategy[4].
Figure 2NLP Pipeline. The pipeline takes in news articles and the World Health Organization (WHO) reports and constructs two-level sentence similarity between titles and the full-text to build a similarity score. Finally, the relevant texts are subject to translation and text to speech conversion for local language consumption (Hindi). This figure was made using Creately (URL:https://creately.com/).
Figure 3Self assessment tool flowchart. Based on the World Health Organization (WHO) Interim Guidance, a questionnaire and flowchart were developed to classify the responders as ‘Suspects' or ‘Non-suspects'. Here SOB refers to Shortness of Breath, and ARI refers to Acute Respiratory Infection.
Figure 4Request-Response cycle in the chatbot. This is a schematic diagram depicting how the answer is displayed whenever a query is asked to the chatbot by a user. This figure was made using Creately (URL: https://creately.com/).
Figure 5Analysis of natural language processing (NLP) pipeline. The graph shows relevance as a function of user feedback functionality in the app. Relevance is seen to increase with cumulative feedback over time. From day 0 onwards, the Relevant Count’s angular coefficient is 1.39 (± 0.488), the angular coefficient of Irrelevant Count is − 0.99 (± 0.602), with an average slope difference of about 2.29.
Figure 6Analysis of public health survey. Distribution graphs showing the distribution of gender among Hindi and English Users. It clearly shows skewness in gender for English users whereas in the case of Hindi users it shows an approximate normalization among the genders.
Figure 7Analysis of self assessment. A simple user-level self-assessment has been deployed to enable the general population to perform self-assessment and identify the population at risk, which can be used as an effective screening. A higher trend for a positive COVID-19 report in people who reported cough was observed. The symptoms of the disease have been known to change with strains, hence this approach of crowdsourcing information provides an agile approach to screen patients with specific symptoms.