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Connecting Islands of Medical Device Manufacturing Data

To unlock the full promise of smart manufacturing equipment, medical device manufacturers need to connect their machines and integrate the data they generate.

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By: Steve Bieszczat

Chief Marketing Officer at DELMIAWorks

Photo: Monchisa/stock.adobe.com

Smart machines equipped with sensors, embedded intelligence, and real-time reporting are rapidly becoming standard in medical device manufacturing. These systems deliver exceptional precision and generate massive amounts of valuable data. Yet, if that information remains locked within the individual machine, it becomes an island disconnected from the broader manufacturing context. In an industry facing strict quality, compliance, and traceability requirements, this isolated data introduces risk, slows decisions, and reduces competitiveness.

To unlock the full promise of smart manufacturing equipment, medical device manufacturers need to connect their machines and integrate the data they generate into a broader operational ecosystem. A manufacturing execution system (MES) serves as the critical bridge, transforming isolated machine outputs into a single source of real-time, actionable truth.

Silos of Smart Machines

Smart machines monitor critical variables, such as pressures, temperatures, cycle times, amperage, and even environmental conditions. However, a machine can only see its own performance and environment. For example, a molding press can report machine cycles, but it cannot connect increased scrap to variations in resin moisture. Likewise, a packaging line may flag reduced throughput but lacks visibility to link the slowdown to dimensional shifts in upstream packaging production.

Complicating matters, medical device plants often operate equipment sourced from different vendors and eras, each using proprietary data formats and interfaces, leading to a patchwork of fragmented information. These data pools fail to present the larger picture of what actually happens across the entire production operation. As a result, visibility is compromised, responses to issues are delayed, and regulatory requirements become harder to meet.

Working with partial truths, operators may not know how their performance impacts downstream processes; quality personnel may struggle to trace defects to their root causes, and management may lack confidence in cost and margin calculations. In an industry where one error can have significant financial and regulatory consequences, relying on incomplete data is not an option.

MES as the Connector

A manufacturing execution system (MES) provides the framework to unify islands of machine data—pulling information from diverse equipment and contextualizing it within a single platform to deliver real-time visibility across the plant. This integration is not limited to machine status. It extends to scheduling, quality management, inventory, and regulatory compliance. The result is a holistic view of operations that drives smarter decisions at every level.

With centralized machine data:

  • Managers can spot performance trends as they occur and intervene immediately to correct a process rather than waiting for end-of-shift reports.
  • Production schedules become more reliable as machine availability and efficiency are factored directly into planning.
  • Operators gain clarity on whether they are meeting goals. Quality teams can monitor metrics against validated specifications in real time.
  • Compliance becomes easier to manage, as all production data is automatically tied to the associated lot, material, and machine.

Enabling Predictive Maintenance

One of the most tangible benefits of MES integration is the shift to predictive maintenance. In medical device manufacturing, unplanned downtime can disrupt supply chains, delay customer deliveries, and compromise regulatory obligations. By continuously monitoring machine conditions and analyzing data patterns, MES-enabled predictive maintenance identifies potential failures before they happen.

Instead of scheduling maintenance on fixed intervals or reacting only after breakdowns, manufacturers can use real-time equipment data to anticipate needs. Elevated motor temperatures, declining hydraulic pressure, or irregular vibration patterns can all trigger proactive interventions. Over time, historical data further strengthens predictive accuracy, helping teams understand how factors, such as material batches, tooling, and environmental conditions, contribute to equipment wear. The result is greater uptime, lower repair costs, and improved reliability.

Elevating Quality and Compliance

In medical device production, quality is paramount. Every part must meet exacting standards, and every lot must be traceable. An MES enhances quality assurance by continuously monitoring production metrics and comparing them against validated specifications. Rather than relying on end-of-line inspections or manual checks, deviations are identified in real time.

This proactive approach reduces the likelihood of producing large batches of defective parts. Trends, such as gradual increases in scrap or shifts in cycle consistency, can be caught early and addressed before they escalate. Because an MES ties production data directly to specific lots and materials, audit readiness improves significantly. Regulatory compliance, a highly resource-intensive aspect of medical device manufacturing, becomes more straightforward when all required records are captured automatically and organized in a central system.

Moving Toward a Unified Operation

Connecting smart machines through an MES does not have to happen all at once. Many manufacturers begin by focusing on a handful of critical machines where downtime or quality issues create the biggest risks. By capturing and analyzing overall equipment effectiveness (OEE) or linking inspection results to production runs, companies gain immediate visibility and measurable returns. From there, integration expands incrementally until the entire plant—and ultimately the extended supply chain—is working from the same connected system.

The journey requires a combination of clear goals, thoughtful prioritization, and collaboration across teams. Engineering, production, and quality must align on what success looks like and what data is most valuable. Open communication standards make connectivity easier, while web-native platforms ensure scalability and future-proofing. By capturing more data than immediately necessary, manufacturers prepare themselves for advanced analytics and artificial intelligence that will shape the next generation of manufacturing intelligence.

Conclusion

For medical device manufacturers, smart machines represent a powerful resource—but only if their data is integrated. Left in isolation, they create silos that limit visibility, weaken compliance, and slow response times. By connecting islands of machine data through an MES, companies unlock real-time insights, predictive capabilities, and a unified view of operations that enable faster decisions, improved quality, and stronger regulatory confidence. As a result, medical device manufacturers that bridge the gap between smart machines and connected operations will be best positioned to grow, adapt, and thrive in a highly competitive and regulated marketplace.


Steve Bieszczat is responsible for DELMIAWorks brand management, demand generation, and product marketing. Prior to DELMIAWorks, he held senior marketing roles at ERP companies IQMS, Epicor, and Activant Solutions. Steve’s focus is on aligning products with industry requirements as well as positioning DELMIAWorks with the strategic direction and requirements of the brand’s manufacturing customers and prospects. Steve holds an engineering degree from the University of Kansas and an MBA from Rockhurst.

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