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Data analytics in life science industry [with examples]

SoftwareOne blog editorial team
Blog Editorial Team
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In any business, it's important to reduce development times, save money, and predict demand more accurately. By using data, you can optimise these processes, which is what we help many enterprises with. Most companies can see benefits from upgrading their data approach:

  • In retail, you could use sales and returns information,
  • In manufacturing, it could be information on products made at different locations and resources consumed,
  • In hospitality, you need data to track and predict the available bookings, based on seasonal demand, etc.

But although data is one of the hot topics these days, rarely do we see it used in the real world. Time to change it!We will show you how our clients use data to streamline their own processes and bring products faster to new markets. As we've been working extensively with pharmaceutical and life sciences companies, we will focus on this industry this time. 

Why use advanced analytics in research and development?

To develop a single medication, we need to create up to 20,000 different compounds.It can take around 12 years, and cost an average of over $1 billion. Even a 10% reduction in these numbers can have a huge impact on the development process - and typically, you would already have all the data necessary to do it. The R&D process starts in a laboratory, with many different chemical substances. Once properly researched and tested, the medication can be transferred to the production phase. The substance should also be reviewed against existing production compounds, as part of quality and safety checks. The final aspect is the back office work, including financing, marketing, sales, HR, etc. The entire process is very time-consuming and cost-prohibitive. By putting data to work, you can bring new medications to market faster, at less expense.

How to use big data and analytics at life science companies?

You can speed up the R&D process by analysing the results of conducted tests at scale. This way you gain a deeper insight and detailed knowledge of molecular solubility, useful for creating new compounds.Additionally, you can cross-analyse results from scientific papers. You can review clinical trials for information about the safety or effectiveness of a substance in a specific group of patients.You can also assess the market potential of medicine by gauging future usage among different population groups. These insights can be gained by analysing epidemiology and reviewing clinical guidelines and papers. A central repository of compound data and clinical outcomes, when used together with cloud-based analysis, can reduce the time needed for analysis to minutes instead of days or weeks.By centralising a data source, you can also take advantage of machine learning models that predict certain trends in order to optimise production. This can give you insights into aspects such as molecular solubility, biological effects, and toxicity of a new substance. 

Optimising production with data

Big data analytics can help you optimise your supply chain too.Consider manufacturing - it's not without its challenges, with multiple production lines, devices, etc. Any failure or mistake can be costly and even lead to some products being withdrawn from sale.That's why data needs to be ready to analyse if something goes wrong, so that you can react fast to any problems.Additionally, with predictive modeling, you can get information about impending failure in time to perform maintenance with minimal downtime. Device information collected in real-time is especially useful for anticipating any equipment problems.Finally, you can use demand forecasting to determine how much of a given product your organisation needs to produce. Based on historical sales and external factors, such as seasonality, you can set up predictive models to forecast future demand.

Why is it so important to learn to work with data?

According to Deloitte, 80% of organisations empowering all employees with data exceed their business goals. At the same time, around 70% of executives don't know how to make the most of their analytical tools.This means that even though most businesses now know how important data is, a majority of them don't know what to do with it.Data is one of the most powerful assets a company can use. Soon, we will see a massive changein the way enterprises consume and process information. To stay ahead of the competition, companies should start their data journey now, if they haven't already.How do you know your data is not working hard enough?Maybe you have a centralised data source but still spend lots of time on confusing spreadsheets, or perhaps your production or sales estimates are done by hand and are not entirely accurate. If that’s the case, you could benefit from developing a data strategy.

How to accelerate your data strategy development?

Three steps to your data roadmap:

  1. Before you reach the point where you can make the most of your data, first you need to see the possibilities for how it can be used at your enterprise, by finding out what data you have. Your service provider can show you what you can do with it.
  2. The next stage is to generate ideas and assess your organisation’s current data use. Through an in-depth assessment, you can determine exactly what is possible for your business, and what is the timeline for it.
  3. Then, you need to have a clear understanding of the possibilities, as well as recommendations, and estimated costs of building and running your solution. You should also have a complete roadmap for your organisation to become data-driven.

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SoftwareOne blog editorial team

Blog Editorial Team

We analyse the latest IT trends and industry-relevant innovations to keep you up-to-date with the latest technology.