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Food and Beverages
2021-07-26 - 2021-07-27    
12:00 am
The conference highlights the theme “Global leading improvement in Food Technology & Beverages Production” aimed to provide an opportunity for the professionals to discuss the [...]
European Endocrinology and Diabetes Congress
2021-08-05 - 2021-08-06    
All Day
This conference is an extraordinary and leading event ardent to the science with practice of endocrinology research, which makes a perfect platform for global networking [...]
Big Data Analysis and Data Mining
2021-08-09 - 2021-08-10    
All Day
Data Mining, the extraction of hidden predictive information from large databases, is a powerful new technology with great potential to help companies focus on the [...]
Agriculture & Horticulture
2021-08-16 - 2021-08-17    
All Day
Agriculture Conference invites a common platform for Deans, Directors, Professors, Students, Research scholars and other participants including CEO, Consultant, Head of Management, Economist, Project Manager [...]
Wireless and Satellite Communication
2021-08-19 - 2021-08-20    
All Day
Conference Series llc Ltd. proudly invites contributors across the globe to its World Convention on 2nd International Conference on Wireless and Satellite Communication (Wireless Conference [...]
Frontiers in Alternative & Traditional Medicine
2021-08-23 - 2021-08-24    
All Day
World Health Organization announced that, “The influx of large numbers of people to mass gathering events may give rise to specific public health risks because [...]
Agroecology and Organic farming
2021-08-26 - 2021-08-27    
All Day
Current research on emerging technologies and strategies, integrated agriculture and sustainable agriculture, crop improvements, the most recent updates in plant and soil science, agriculture and [...]
Agriculture Sciences and Farming Technology
2021-08-26 - 2021-08-27    
All Day
Current research on emerging technologies and strategies, integrated agriculture and sustainable agriculture, crop improvements, the most recent updates in plant and soil science, agriculture and [...]
CIVIL ENGINEERING, ARCHITECTURE AND STRUCTURAL MATERIALS
2021-08-27 - 2021-08-28    
All Day
Engineering is applied to the profession in which information on the numerical/mathematical and natural sciences, picked up by study, understanding, and practice, are applied to [...]
Diabetes, Obesity and Its Complications
2021-09-02 - 2021-09-03    
All Day
Diabetes Congress 2021 aims to provide a platform to share knowledge, expertise along with unparalleled networking opportunities between a large number of medical and industrial [...]
Events on 2021-07-26
Food and Beverages
26 Jul 21
Events on 2021-08-05
Events on 2021-08-09
Events on 2021-08-16
Events on 2021-08-19
Events on 2021-08-23
Events on 2021-09-02
Articles

Clinical trials can be expedited in part by: With electronic medical records, jump straight to the data

It has been projected that the amount of published scientific publications doubles every 17.3 years. But before basic lab studies on cell cultures and animals become clinical trials involving humans, it takes an average of 17 years for health and medical research to lead to real changes that patients observe in the clinic.

Medical research processes as they normally operate are typically ill-prepared to deal with rapidly changing pandemics. This has been particularly clear in the case of the COVID-19 pandemic, partly due to the virus’s frequent mutations. It is frequently left to scientists and public health officials to constantly juggle the development and testing of novel medicines to keep up with evolving varieties.

Thankfully, by utilizing a shared source of existing data, electronic medical records, or EMRs, scientists may be able to circumvent the traditional research timetable and investigate therapies and interventions as they are utilized in the clinic almost in real time.

Our team consists of a cardiologist from the University of Pittsburgh Medical Center, a pharmacist, and an epidemiology. We became aware of the urgency of promptly researching and sharing precise information on the best treatment modalities during the COVID-19 epidemic, particularly for patients who were at a high risk of hospitalization and death. Using electronic medical records (EMR) data, our newly published study demonstrated that early therapy with one or more of five distinct monoclonal antibodies significantly decreased the chance of hospitalization or mortality when compared with delayed or no treatment.

Conducting research with EMR data

EMR systems are commonly used by U.S. health care institutions for billing and administrative functions such as patient care documentation. These systems generally hold comprehensive records that can include sociodemographic data, medical history, test results, surgery and other operations, prescriptions, and billing expenses, even though data gathering is not consistent.

Many sizable health care systems in the United States gather patient data utilizing several EMR systems, in contrast to single-payer health care systems that integrate data into a single EMR system, such those in the United Kingdom and Scandinavian nations.

Using such data for scientific inquiry is made more challenging by the existence of multiple EMR systems. In response, the 40 hospitals and outpatient clinics of the University of Pittsburgh Medical Center utilize seven distinct EMR systems. To address this, the medical center created and manages a clinical data warehouse that gathers and unifies data from these systems.

Simulating medical procedures

Researching using EMR data is not a novel idea. Recently, scientists have begun investigating how to simulate randomized controlled trials—which are seen to be the gold standard study design but are sometimes expensive and take years to finish—using these massive health data platforms.

Our team evaluated five distinct monoclonal antibodies for which the Food and Drug Administration has granted emergency use authorization to treat COVID-19 using this emulation approach and our institution’s EMR data infrastructure. Human-made proteins known as monoclonal antibodies are intended to stop a pathogen—in this case, the COVID-19 virus—from penetrating human cells, proliferating, and posing a major threat to health. Clinical trial data served as the foundation for the initial authorizations. However, when the virus changed, further assessments based on cell

Our goal was to verify that the results of research conducted on cells could be applied to real patients. In order to match the anonymous clinical data from 2,571 patients treated with these monoclonal antibodies within two days of contracting COVID-19 with the data from 5,135 COVID-19 patients who were eligible for treatment but either did not receive it or received it three days or more after infection, we evaluated the data.

Those who received monoclonal antibodies within two days of a positive COVID-19 test, on average, had a 39% lower chance of dying or being admitted to the hospital than those who did not receive the medication or who received it later. Furthermore, regardless of age, patients with weakened immune systems had a 55% lower chance of dying or being admitted to the hospital.

The results of the cell culture investigations were validated by our near-real-time monitoring of COVID-19 patients receiving monoclonal antibodies during the pandemic. According to our findings, researchers may be able to assess therapies quickly and without the need for clinical trials by utilizing data in this manner.

Appropriate usage of EMR data

Researchers can use the EMR systems found in many healthcare facilities to quickly address significant research topics as they come up. However, since this clinical data isn’t being gathered especially for studies, researchers must carefully plan their investigations and employ rigorous data validation and analysis. Additionally, they must exercise extreme caution when choosing suitable patient samples, harmonizing data from various EMR systems, and minimizing any potential sources of bias.

Significant public health issues and new pandemics are likely to appear suddenly and in unexpected ways. We think that judicious use of these data can assist address pressing health concerns in ways that are indicative of who is actually receiving care, given the wealth of information routinely gathered throughout U.S. health care systems.