Strategy & Execution for Healthcare Analytics Companies through Delivery PODS By Arun Rangamani, SVP- Analytics & Technology, SCIO Health Analytics

Strategy & Execution for Healthcare Analytics Companies through Delivery "PODS"

Arun Rangamani, SVP- Analytics & Technology, SCIO Health Analytics | Wednesday, 08 March 2017, 05:28 IST

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The current BI & Analytics CoE delivery models prevalent amongst analytics vendors & IT players are either product based “uni” solutions, or dedicated CoE comprising of “monochromatic” FTE based, catering to the BI needs of Healthcare clients – Payers, Hospitals, CMS, Clearing Houses, HMOs, Physician Practices,
PBMs etc.

The future of these delivery models is non-sustainable due to the rapidly changing, smorgasbord of complex BI demands from multiple departments in clients’ (Healthcare) ecosystem. In fact, the biggest gaps are the current delivery systems’ inability to produce impactful BI insights to the clients in a timely manner– and this is because of lack of proper execution strategy and unused potent in combining the appropriate skillsets required to get the job done.

This is getting further complicated with multiple datasets adding & plaguing the systems as big data and the lack of proper plan amongst the execution/delivery teams on what question to ask the data. The delivery models are simply not prepared to handle the questions, unable to staff the right skillsets, and hence the inability to build the right BI delivery framework.

BI-PODS - Future Packaging of Healthcare related BI & Analytical (including Techno, Functional, and Clinical & Coding) service offerings would germinate from small and fully independent POD teams gradually evolving into dedicated & customized CoE based BI solutions.

This will be the only way to provide the multiple values and differentiated outcomes for the customers, addressing the gaps adding multiple insights. The ROI in the BI front can also be measured upfront by doing opportunity analytics. The POD teams will typically comprise of the following components - combination of data scientists/statisticians, big data engineers, clinical staff, healthcare coding experts, application developers, visualization experts, tech writers and technology
tools/enablers.

The POD components in the framework will not be persisting as silos in their own departments but would work together under a POD owner who will create the right skill/effort capacity combination for the deliverable. The different components/elements will get support from a center of excellence within the vendor for any upskill/cross-skill training. The POD elements would collaborate in an intricate fashion through a well-designed framework and defined metadata for their roles to create the tapestry needed for delivery.

The example of the POD model could be delivering analytics as insights for a Hospital chain on their costs of readmission & reasons for the same, and what they should do to reduce the costs. Typically this problem would be addressed by a product vendor with a BI reporting tool reading of data-marts, and queries configured in it by an analyst based on inputs from the Hospital side analysts.  The second current method of delivery is to expand on the Hospital staff IT through an FTE model and this is the case when the Hospital has invested in a BI tool on its own but does not have the bandwidth to do the BI reports.

The outcomes in both the above delivery models will be basic descriptive reports and these would be delivered with some difficulty and the timelines would not permit them to have a lot of insights. The growing government needs for more detailed reporting with insights will not be met with the current delivery model.  The reason for the difficulties is not having the right combination of skills working in tandem as one small team to deliver value.

Now, with the POD model, both the delivery models would be run seamlessly. The POD leader would understand the need of the Hospital and based on the problem statement, and assign a combination of resources – statisticians/data scientists with some primer knowledge of LACE model, reporting engineers with visualization experience for creating dashboards, clinical staff who understand readmission, coders who can read into the medical records and understand the costs – and plan capacity assigned to this assignment. This combination of resources with different skillsets along with tools travels through the project time as though they are a delivery POD.

The initial small ‘POD’ Structure will evolve into a full-fledged delivery model with multiple PODS working on multiple assignments from clients creating the POD-COE for Business Intelligence. The POD model is applicable for BI and Insights derivation, but not very useful for BPO type of work-products where repeatability is a premium and not very useful for IT services based work products as well.

The BI product based vendors are stuck to their belief of plug/play in BI and it is not going to scale, and the FTE based teams which staff augments client side teams are not adding true value except for cost-arbitrage. BI is Knowledge based and hence needs these innovative delivery models, and BI-POD to POD-COE could be one of the premium delivery models to provide the much needed value.

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