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A machine learning-based approach to determine infection status in recipients of BBV152 whole virion inactivated SARS-CoV-2 vaccine for serological surveys

Authors :
Prateek Singh
Rajat Ujjainiya
Satyartha Prakash
Salwa Naushin
Viren Sardana
Nitin Bhatheja
Ajay Pratap Singh
Joydeb Barman
Kartik Kumar
Raju Khan
Karthik Bharadwaj Tallapaka
Mahesh Anumalla
Amit Lahiri
Susanta Kar
Vivek Bhosale
Mrigank Srivastava
Madhav Nilakanth Mugale
C.P Pandey
Shaziya Khan
Shivani Katiyar
Desh Raj
Sharmeen Ishteyaque
Sonu Khanka
Ankita Rani
null Promila
Jyotsna Sharma
Anuradha Seth
Mukul Dutta
Nishant Saurabh
Murugan Veerapandian
Ganesh Venkatachalam
Deepak Bansal
Dinesh Gupta
Prakash M Halami
Muthukumar Serva Peddha
Gopinath M Sundaram
Ravindra P Veeranna
Anirban Pal
Ranvijay Kumar Singh
Suresh Kumar Anandasadagopan
Parimala Karuppanan
Syed Nasar Rahman
Gopika Selvakumar
Subramanian Venkatesan
MalayKumar Karmakar
Harish Kumar Sardana
Animika Kothari
DevendraSingh Parihar
Anupma Thakur
Anas Saifi
Naman Gupta
Yogita Singh
Ritu Reddu
Rizul Gautam
Anuj Mishra
Avinash Mishra
Iranna Gogeri
Geethavani Rayasam
Yogendra Padwad
Vikram Patial
Vipin Hallan
Damanpreet Singh
Narendra Tirpude
Partha Chakrabarti
Sujay Krishna Maity
Dipyaman Ganguly
Ramakrishna Sistla
Narender Kumar Balthu
A Kiran Kumar
Siva Ranjith
B Vijay Kumar
Piyush Singh Jamwal
Anshu Wali
Sajad Ahmed
Rekha Chouhan
Sumit G Gandhi
Nancy Sharma
Garima Rai
Faisal Irshad
Vijay Lakshmi Jamwal
MasroorAhmad Paddar
Sameer Ullah Khan
Fayaz Malik
Debashish Ghosh
Ghanshyam Thakkar
S K Barik
Prabhanshu Tripathi
Yatendra Kumar Satija
Sneha Mohanty
Md. Tauseef Khan
Umakanta Subudhi
Pradip Sen
Rashmi Kumar
Anshu Bhardwaj
Pawan Gupta
Deepak Sharma
Amit Tuli
Saumya Ray chaudhuri
Srinivasan Krishnamurthi
L Prakash
Ch V Rao
B N Singh
Arvindkumar Chaurasiya
Meera Chaurasiyar
Mayuri Bhadange
Bhagyashree Likhitkar
Sharada Mohite
Yogita Patil
Mahesh Kulkarni
Rakesh Joshi
Vaibhav Pandya
Sachin Mahajan
Amita Patil
Rachel Samson
Tejas Vare
Mahesh Dharne
Ashok Giri
Shilpa Paranjape
G. Narahari Sastry
Jatin Kalita
Tridip Phukan
Prasenjit Manna
Wahengbam Romi
Pankaj Bharali
Dibyajyoti Ozah
Ravi Kumar Sahu
Prachurjya Dutta
Moirangthem Goutam Singh
Gayatri Gogoi
Yasmin BegamTapadar
Elapavalooru VSSK Babu
Rajeev K Sukumaran
Aishwarya R Nair
Anoop Puthiyamadam
PrajeeshKooloth Valappil
Adrash Velayudhan Pillai Prasannakumari
Kalpana Chodankar
Samir Damare
Ved Varun Agrawal
Kumardeep Chaudhary
Anurag Agrawal
Shantanu Sengupta
Debasis Dash
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Data science has been an invaluable part of the COVID-19 pandemic response with multiple applications, ranging from tracking viral evolution to understanding the effectiveness of interventions. Asymptomatic breakthrough infections have been a major problem during the ongoing surge of Delta variant globally. Serological discrimination of vaccine response from infection has so far been limited to Spike protein vaccines used in the higher-income regions. Here, we show for the first time how statistical and machine learning (ML) approaches can discriminate SARS-CoV-2 infection from immune response to an inactivated whole virion vaccine (BBV152, Covaxin, India), thereby permitting real-world vaccine effectiveness assessments from cohort-based serosurveys in Asia and Africa where such vaccines are commonly used. Briefly, we accessed serial data on Anti-S and Anti-NC antibody concentration values, along with age, sex, number of doses, and number of days since the last vaccine dose for 1823 Covaxin recipients. An ensemble ML model, incorporating a consensus clustering approach alongside the support vector machine (SVM) model, was built on 1063 samples where reliable qualifying data existed, and then applied to the entire dataset. Of 1448 self-reported negative subjects, 724 were classified as infected. Since the vaccine contains wild-type virus and the antibodies induced will neutralize wild type much better than Delta variant, we determined the relative ability of a random subset of such samples to neutralize Delta versus wild type strain. In 100 of 156 samples, where ML prediction differed from self-reported uninfected status, Delta variant, was neutralized more effectively than the wild type, which cannot happen without infection. The fraction rose to 71.8% (28 of 39) in subjects predicted to be infected during the surge, which is concordant with the percentage of sequences classified as Delta (75.6%-80.2%) over the same period.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........ff6593d28c701303610a99bb6f7179be
Full Text :
https://doi.org/10.1101/2021.12.16.21267889