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Drug Addiction and Rehabilitation Therapy
2021-11-12 - 2021-11-13    
All Day
Conference Series LLC Ltd is delighted to invite the Scientists, Physiotherapists, neurologists, Doctors, researchers & experts from the arena of Drug Addiction and Rehabilitation therapy, [...]
Drug Addiction and Rehabilitation Therapy
2021-11-12 - 2021-11-13    
All Day
This Rehabilitation 2021 Conference is based on the theme “Exploring latest Innovations in Drug Addiction and Rehabilitation”. Rehabilitation 2021, Singapore welcomes proposals and ideas from [...]
3D Printing and Additive Manufacturing
2021-11-15 - 2021-11-16    
All Day
DLP (Digital Light Processing) is a similar process to stereolithography in that it is a 3D printing process that works with photopolymers. The major difference [...]
Microfluidics and Bio-MEMS 2021
2021-11-16 - 2021-11-17    
All Day
Lab-on-a-chip (LOC) devices integrate and scale down laboratory functions and processes to a miniaturized chip format. Many LOC devices are used in a wide array [...]
Food Technology & Processing
2021-12-01 - 2021-12-02    
All Day
Food Technology 2021 scientific committee feels esteemed delight to invite participants from around the world to join us at 25th International Conference on Food Technology [...]
Events on 2021-11-15
Events on 2021-11-16
Events on 2021-12-01
Articles

May 28 : The overlap between EHRs and big data

health systems

By Drew Settles, Technology Advice

You cannot manage what you cannot measure. And if you can’t measure it, you can’t improve it. These management adages are particularly resonant when it come to electronic health records (EHRs) and medical data.

When the EHR mandates were passed down in the American Recovery and Reinvestment Act (ARRA) of 2009, the idea was that moving patient records to an electronic format would improve clinical efficiency and treatment outcomes, thereby lowering medical costs. While the jury is still out on efficiency, EMR software is being used to collect massive amounts of data that will, in time, improve treatment outcomes.

Previous to EHR adoption, the only way to aggregate large amounts of clinical data was to do so manually. Published clinical trials were the best way to discover new treatment options, but trials are limited in that they only record the data that the administering physician deemed important or appropriate. In addition to data limitations, it takes an average of 17 years (really) for clinical trial research to be incorporated into everyday practices, according to the Agency for Healthcare Research and Quality (AHRQ. EHRs can collect more data, and disseminate it faster than any clinical trial.

While EHR interoperability remains low, in the not-too-distant future, EHRs should be able to export large sets of anonymized patient data, allowing clinicians to discover patterns in treatments, symptoms, demographic information, and more. Physicians will be able to review their patients records against large datasets to establish better baselines and averages. This will also help better plan treatments. For example, an oncologist could predict his or her patient’s reaction to a certain treatment based on the reactions of other patients who share similar symptoms, genetics, etc.

This type of data is already being utilized, albeit in a limited capacity, in clinical decision support functionality. Clinical decision support software (CDSS) can review a physician’s diagnosis against an individual  patient’s historical record. Also, CDSS can review a patient’s medication history and return data on the efficacy of past and current medications. That data can be used to make medication and dosage recommendations.

While the information is limited to a single patient and EHR vendor at present, improvements in interoperability should allow CDSS to draw from larger datasets. This would help further reduce the possibility of adverse reactions to treatments and medications.

In short, better measurement of health data will help physicians better manage patient health, and improve treatment outcomes. Of course, the old statistical adage “garbage in, garbage out” still applies here. Conclusions drawn from inaccurate or incomplete datasets can be dangerous. Thankfully,  the higher specificity of ICD-10 diagnosis codes should improve the quality of data, and the conclusions drawn from said data.

Source