The advantages and drawbacks of using big data in healthcare

May 12
18:44

2021

Mariaa Lopez

Mariaa Lopez

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Technology-driven change is the new revolution that the world is talking about. Irrespective of the industries, technology is witnessing the rise in its application. The medical and healthcare industry deals with a lot of data, and this information can be beneficial. Also, having a Big Data Certification can help in giving an edge over others. The purpose of this blog is to highlight the use of big data in healthcare.

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The digital revolution that everyone is talking about is technology-driven transformation. Technology is being used more often,The advantages and drawbacks of using big data in healthcare Articles regardless of the industry. The medical and healthcare industries manage a significant amount of data that can be useful. Furthermore, gaining a Big Data Certification will help you stand out from the crowd. The aim of this blog is to show how big data is being used in healthcare.

Healthcare and big data

Big data in healthcare refers to the massive amounts of data generated by digital technology that capture patient data. This information will aid in the tracking of patient results. Big Data experts analyze vast amounts of data and transform it into useful knowledge using a range of approaches and technologies.

The effect of the technical operation on the mode of service has always been positive. This could be useful for preventing epidemics and curing diseases, among other things.

The following are some of the advantages of using Big Data in healthcare:

Predictions for Patients: In the healthcare sector, keeping the correct number of workers on hand at any given time is a major issue. Hiring too many people will increase labor costs, making it impossible to treat patients with fewer people. Big data will certainly be used to address this problem.

Electronic health records: As previously mentioned, the medical field deals with a great deal of data and information. This information can be linked to medical records, allergies, test results, and other factors. All of these records are included in a single editable file. There will be no data duplication, and physicians will be able to make changes to their files without having to fill out paperwork.

EHRs also trigger alarms and reminders to alert patients to pending lab tests or health screenings. However, there are many obstacles to overcome, and fully implementing them would be difficult.

Predictive Analytics in Healthcare: Predictive analytics is another important application of Big Data. Healthcare practitioners may use Big Data to increase the quality of patient care.

Doctors would be able to make data-driven decisions within seconds of treatment using this model. This is beneficial for patients who have a long medical history. It's simple to determine whether a patient is at risk of diabetes with the aid of advanced BI solutions, and they're given helpful healthcare advice.

Obstacles include the following:

One of Big Data's main problems is dealing with large amounts of data. Since the medical and healthcare industries deal with so much data, dealing with such large numbers can be difficult.

Another issue that we are confronted with is a scarcity of qualified and experienced data engineers. According to DICE, it takes 46 days to fill a data engineer spot, despite the fact that the average drawn salary is $100,000 per year. This clearly demonstrates a labor shortage.

The best big data practitioners and data engineers will be needed for a successful Big Data application. If you want to work in this area, enroll in the Global Tech Council Big Data certification program.