Digital Twin Simulating the Bright Future of Healthcare
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With ever-increasing complexity in the manufacturing processes, healthcare, aerospace, defense, automotive, and other domains, it is becoming a difficult task for human brains to cope up with required perfection and accuracy. Industries are experimenting with an emerging concept, where digital replicas are created for physical objects to identify bottlenecks and predict outcomes. Within healthcare, this technology can simplify complex tasks like personalizing care, predicting health outcomes, and planning patient care. For instance, a US startup Medical Augmented Intelligence (MAI) created DigiTwin, which converts 2D medical images into 3D that enables clinicians to engage with their patients through digital twins. It can be further explored for pre-operative studies or post-operative surgical outcomes and create better health plans for patients. Shortly, the digital twin is expected to be a prominent asset for healthcare professionals for its ability to analyze real-time data and making informed decisions. Integration with IoT will further simplify the process simulation, health predictions, and accurate disease diagnosis, thus improving the overall quality of life
By definition, a digital twin is a dynamic digital replica or per se mirror image of a physical object, which is identical in every aspect with that object and creates a connection between the real and virtual world. The digital twin can be a replica of any process, system, device, or individual.
Data scientists study the dynamics of a physical object through operational and functional data captured by sensors attached to the physical object. This data is then used to develop an algorithmic model. The model simulates the physical object to provide insights into the performance and potential problems in near real-time. Data scientists play a major role in analyzing the data which is used to create iterative algorithmic models to generate insights.
NASA introduced the concept by creating a simulated replica of machines sent to outer space that required maintenance and monitoring which was practically impossible. The concept proved vital during the Apollo 13 mission as the engineers and astronauts were able to detect and fix the issues using digital replicas remotely. In 2002, Michael Grieves at the University of Michigan conceived the idea of implementing mirror images for efficient product life cycle management. Companies such as Siemens and GE implemented this concept for real-time monitoring and predictive analysis of machines.
The foundation of the digital twin ecosystem lies within the following concepts and has been represented as in Exhibit 1.
Digital Twin Environment (DTE) is created by integrating DTP, DTI, and DTA components for the predictive analysis of a product.
Manufacturing industries often face difficulties in monitoring and inspecting the production lines in real-time. Digital twin enables real-time monitoring of real-world objects (machinery) on a digital model. The resultant provides a deeper understanding and error-free operation of the production lines in the manufacturing process. In healthcare, real-time monitoring, effective therapeutic regimen, and preventive care of patients is a cumbersome processes for healthcare practitioners. With the introduction of the digital twin concept, monitoring and evaluation of patients’ health are simplified, enabling effective outcomes.
Apart from monitoring patients in real-time, the digital twin can be helpful for proactive remote monitoring of medical equipment and predictive maintenance of device/equipment to detect potential problems or technical issues before their occurrence such as maintenance scheduling for medical devices/equipment during downtime. This can prevent disruption of the continuity of care, in addition to saving money, time, and effort.
Another aspect that could be useful is the simulation of the outcome before building a prototype or actual medical device. This results in decreased research and development expenditure, along with reduced iterations and development time.
With wide application and benefits across industries, a digital twin is paving its way in aerospace, defense, automotive, and other allied areas. It is gradually penetrating and addressing the unmet needs in healthcare, though still at a conceptual stage. Some trending healthcare applications are listed here (also represented in Exhibit 2):
Exhibit 3 represents a few use cases in the healthcare domain that showcase the benefits of the digital twin concept.
The digital twin is a step towards a highly advanced digital revolution with unprecedented efficiencies to make the world a better place for humankind. Optimization, prediction, and simulations are the keys to a successful implementation of digital twinning. Exhibit 4 represents how the stakeholders in the healthcare segment are utilizing the digital twin to deliver quality care.
Although the benefits of creating a digital twin are too vast and still not fully explored, there are certainly some bottlenecks for its success.
The idea of creating a digital replica of a physical asset to monitor, analyze, and predict seems promising for the healthcare industry which is heading towards value-based care driven by definite outcomes. Complex algorithms are utilized to create replicas & digital models of patients, healthcare facilities, and medical devices, which could be critical in addressing issues like personalizing care delivery, predictive maintenance of healthcare facilities, and increasing R&D costs. It is expected that in the future the pre-clinical and clinical trials can be replaced with the digital twins of animals and humans. Companies should increasingly adopt the digital twin concept to cut down their research and development costs, improve the quality of life of their patients, and bring more treatments on the market. Although data integrity and limited availability of trained researchers to develop and monitor highly complex algorithms for digital twins are some of the major concerns that can poise resistance to the progress of its advancement in healthcare, but the introduction of strict regulations like the General Data Protection Regulation (GDPR) and upskilling programs will ensure a smooth journey for digital twins in the healthcare segment.
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