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1.
Med Hypotheses ; 146: 110395, 2021 Jan.
Article in English | MEDLINE | ID: mdl-33341328

ABSTRACT

We present the hypothesis to the scientific community actively designing clinical trials and recommending public health guidelines to control the pandemic that - "Tetanus vaccination may be contributing to reduced severity of the COVID-19 infection" - and urge further research to validate or invalidate the effectiveness of the tetanus toxoid vaccine against COVID-19. This hypothesis was revealed by an explainable artificial intelligence system unleashed on open public biomedical datasets. As a foundation for scientific rigor, we describe the data and the artificial intelligence system, document the provenance and methodology used to derive the hypothesis and also gather potentially relevant data/evidence from recent studies. We conclude that while correlations may not be reason for causation, correlations from multiple sources is more than a serendipitous coincidence that is worthy of further and deeper investigation.


Subject(s)
COVID-19/prevention & control , Models, Biological , Pandemics/prevention & control , SARS-CoV-2 , Tetanus Toxoid/pharmacology , Artificial Intelligence , COVID-19/immunology , COVID-19/virology , COVID-19 Vaccines/pharmacology , Clostridium tetani/genetics , Clostridium tetani/immunology , Databases, Pharmaceutical , Drug Repositioning/statistics & numerical data , Humans , SARS-CoV-2/genetics , SARS-CoV-2/immunology , Sequence Homology, Amino Acid , Severity of Illness Index , Spike Glycoprotein, Coronavirus/genetics , Spike Glycoprotein, Coronavirus/immunology , Tetanus Toxin/genetics , Vaccination
2.
Nanotechnology ; 27(41): 414003, 2016 Oct 14.
Article in English | MEDLINE | ID: mdl-27607339

ABSTRACT

We develop and implement a multifrequency spectroscopy and spectroscopic imaging mode, referred to as general dynamic mode (GDM), that captures the complete spatially- and stimulus dependent information on nonlinear cantilever dynamics in scanning probe microscopy (SPM). GDM acquires the cantilever response including harmonics and mode mixing products across the entire broadband cantilever spectrum as a function of excitation frequency. GDM spectra substitute the classical measurements in SPM, e.g. amplitude and phase in lock-in detection. Here, GDM is used to investigate the response of a purely capacitively driven cantilever. We use information theory techniques to mine the data and verify the findings with governing equations and classical lock-in based approaches. We explore the dependence of the cantilever dynamics on the tip-sample distance, AC and DC driving bias. This approach can be applied to investigate the dynamic behavior of other systems within and beyond dynamic SPM. GDM is expected to be useful for separating the contribution of different physical phenomena in the cantilever response and understanding the role of cantilever dynamics in dynamic AFM techniques.

3.
Int J Health Care Qual Assur ; 28(6): 621-34, 2015.
Article in English | MEDLINE | ID: mdl-26156435

ABSTRACT

PURPOSE: The current trend in Big Data analytics and in particular health information technology is toward building sophisticated models, methods and tools for business, operational and clinical intelligence. However, the critical issue of data quality required for these models is not getting the attention it deserves. The purpose of this paper is to highlight the issues of data quality in the context of Big Data health care analytics. DESIGN/METHODOLOGY/APPROACH: The insights presented in this paper are the results of analytics work that was done in different organizations on a variety of health data sets. The data sets include Medicare and Medicaid claims, provider enrollment data sets from both public and private sources, electronic health records from regional health centers accessed through partnerships with health care claims processing entities under health privacy protected guidelines. FINDINGS: Assessment of data quality in health care has to consider: first, the entire lifecycle of health data; second, problems arising from errors and inaccuracies in the data itself; third, the source(s) and the pedigree of the data; and fourth, how the underlying purpose of data collection impact the analytic processing and knowledge expected to be derived. Automation in the form of data handling, storage, entry and processing technologies is to be viewed as a double-edged sword. At one level, automation can be a good solution, while at another level it can create a different set of data quality issues. Implementation of health care analytics with Big Data is enabled by a road map that addresses the organizational and technological aspects of data quality assurance. PRACTICAL IMPLICATIONS: The value derived from the use of analytics should be the primary determinant of data quality. Based on this premise, health care enterprises embracing Big Data should have a road map for a systematic approach to data quality. Health care data quality problems can be so very specific that organizations might have to build their own custom software or data quality rule engines. ORIGINALITY/VALUE: Today, data quality issues are diagnosed and addressed in a piece-meal fashion. The authors recommend a data lifecycle approach and provide a road map, that is more appropriate with the dimensions of Big Data and fits different stages in the analytical workflow.


Subject(s)
Medical Informatics/organization & administration , Medical Informatics/statistics & numerical data , Quality of Health Care/organization & administration , Quality of Health Care/statistics & numerical data , Statistics as Topic/methods , Data Interpretation, Statistical , Electronic Health Records , Humans , Quality Assurance, Health Care/organization & administration , Quality Assurance, Health Care/statistics & numerical data , Systems Integration , United States
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