Impact of Bias in Data Collection of COVID-19 Cases

Author:

Manchanda Raj Kumar1ORCID,Miglani Anjali2,Chakraborty Moumita3,Meena Baljeet Singh4,Sharma Kavita2,Gupta Meeta5,Sharma Ashok6,Chadha Vishal7,Rani Purnima3,Singh Rahul Kumar4,Rutten Lex8

Affiliation:

1. Directorate of AYUSH, Health and Family Welfare Department, Government of NCT of Delhi, New Delhi, India

2. Homeopathic Unit, Delhi Government Health Centre, Government of NCT of Delhi, New Delhi, India

3. Homeopathic Unit, GTB Hospital, Government of NCT of Delhi, New Delhi, India

4. Homeopathic Unit, SRHC Hospital, Government of NCT of Delhi, New Delhi, India

5. Directorate of AYUSH, Government of NCT of Delhi, New Delhi, India

6. Homeopathic Unit, Delhi Secretariat, Government of NCT of Delhi, New Delhi, India

7. Homeopathic Unit, DHAS Hospital, Government of NCT of Delhi, New Delhi, India

8. Independent Researcher, Breda, The Netherlands

Abstract

Abstract Background Prognostic factor research (PFR), prevalence of symptoms and likelihood ratio (LR) play an important role in identifying prescribing indications of useful homeopathic remedies. It involves meticulous unbiased collection and analysis of data collected during clinical practice. This paper is an attempt to identify causes of bias and suggests ways to mitigate them for improving the accuracy in prescribing for better clinical outcomes and execution of randomized controlled studies. Methods A prospective, open label, observational study was performed from April 2020 to December 2020 at two COVID Health Centers. A custom-made Excel spreadsheet containing 71 fields covering a spectrum of COVID-19 symptoms was shared with doctors for regular reporting. Cases suitable for PFR were selected. LR was calculated for commonly occurring symptoms. Outlier values with LR ≥5 were identified and variance of LRs was calculated. Results Out of 1,889 treated cases of confirmed COVID-19, 1,445 cases were selected for pre-specified reasons. Nine medicines, Arsenicum album, Bryonia alba, Gelsemium sempervirens, Pulsatilla nigricans, Hepar sulphuricus, Magnesia muriaticum, Phosphorus, Nux vomica and Belladonna, were most frequently prescribed. Outlier values and large variance for Hepar sulphuricus and Magnesia muriaticum were noticed as indication of bias. Confirmation bias leading to lowering of symptom threshold, keynote prescribing, and deficiency in checking of all symptoms in each case were identified as the most important sources of bias. Conclusion Careful identification of biases and remedial steps such as training of doctors, regular monitoring of data, checking of all pre-defined symptoms, and multicenter data collection are important steps to mitigate biases.

Publisher

Georg Thieme Verlag KG

Subject

Complementary and alternative medicine

Reference21 articles.

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2. Characteristics of and important lessons from the coronavirus disease 2019 (COVID-19) outbreak in China: summary of a report of 72 314 cases from the Chinese Center for Disease Control and Prevention;Z Wu;JAMA,2020

3. AYUSH for COVID-19: science or superstition?;R Priya;Indian J Public Health,2020

4. Clinical characteristics and remedy profiles of patients with COVID-19: a retrospective cohort study;B Jethani;Homeopathy,2021

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