TechDogs-"Actionable Data Drives Next Era Of Surgical Robotics"

Health Care Technology

Actionable Data Drives Next Era Of Surgical Robotics

By Dr. Joseph Nathan Co-founder, President, and Chief Medical OfficerForSight Robotics

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With the rise of robotics, AI, and automation, we are entering a new phase of surgery that will no longer solely depend on human hands. Instead, it will focus on collecting and leveraging data to deliver more precise and safe procedures. With the integration of sensors, advanced imaging, and real-time feedback loops, robotics systems have the potential to become autonomous, intelligent, and capable of performing increasingly complex tasks. AI and data intelligence have accelerated these advancements, introducing new applications for robotics, including ophthalmic surgery.

In ophthalmology, the need for medical robotics is especially urgent. With the global demand for cataract surgery expected to double by 2050, the world is facing a critical shortage of ophthalmologists. In the United States, by 2035, the number of ophthalmic surgeons is expected to decline by 12%, while demand for care is projected to increase by 24%. Robotics has the potential to bridge the growing surgical workforce gap by addressing care capacity and expanding access to critical eye care for all.

There has never been a more opportune time in robotics than right now. Below, I have outlined several of the ways data intelligence and AI are shaping the future of a central facet of the industry, surgical robotics.
 

Embedding Data Collection into Robotics Systems


In 2025, funding for robotics and AI surpassed $8.5 billion, with increased investments in companies that blend innovation with strong data pipelines. This wave of investment is backing the idea that data-driven robotics will accelerate the next phase of real-world automation. We have already seen this through autonomous driving technology companies Waymo and Tesla, which have paved the way for data collection by incorporating it into the foundation of their vehicles’ operations.

Unlike Waymo and Tesla, where the core of their technology, the car, has existed for decades, surgical robotics companies are simultaneously imagining and building first-of-their-kind robotic systems that embed data collection algorithms directly into the technology. In doing so, they are creating continuous learning cycles that build learning and performance improvement into the core of the system’s evolution.

In surgery, creating a continuous feedback loop is crucial for the scalability of robotics in the future, to ensure that robotics technology evolves at the same pace as innovation. As sensors, imaging, and machine learning advance, medical robotics will evolve beyond assisting surgeons to become adaptive collaborators. Rather than replacing human expertise, augmented robotics will empower surgeons and enable safer, more precise surgical care.
 

Quality of Data Matters


Not all data is created equal. Similar to ChatGPT, the quality of training data is crucial to the development of strong AI models. The larger and more diverse the dataset, the more accurate and precise these surgical systems can be.

By embedding actionable data at the infrastructure level, surgical data from real surgeries are fed into LLM. This creates a continuous learning and feedback loop, strengthening and advancing the AI model to provide surgeons with proven data and insights for future surgeries. By integrating a continuous cadence of data collection into their AI models, founders can scale and deliver the most advanced and highly accurate robotics systems, making surgical procedures safer, faster, and more accessible.
 

Shortening the Training Lifespan with Data and AI


When it comes to ophthalmologic training, there is a steep learning curve for most surgeons. On average, it takes 15 years of training and a lifetime of continual growth to reach peak surgical performance. Facing both rising demand for care and steep training requirements, a new approach to training and skill development is needed to shorten the training lifespan; enter AI-driven simulations.

In the medical profession, simulations are crucial for developing surgical skills and learning new techniques. By utilizing AI-driven simulations in addition to physical models for training, surgeons have access to quantitative and qualitative tailored feedback that can adapt the learning path based on automatic analysis of performance. The AI-simulation process also allows surgeons to encounter edge cases they may encounter only a few times in their careers, thus expanding their skill set beyond the operating room.

To provide the most accurate training, simulators require a constant stream of data-driven insights to inform surgical training simulations. With AI, we can collect and analyze thousands of hours of data, identify cases as examples for best techniques and practices, and apply these real-world complex cases to enable surgeons to train on simulations and practice their techniques.

AI-driven surgical simulators will significantly reduce the time it takes a surgeon to become proficient, requiring a fraction of the time and resources currently needed, while ensuring that surgeons worldwide have the best opportunity to reach their full potential.
 

Looking Ahead


Every advanced technology has to start somewhere. For surgical robotics, it began with general surgery with the introduction of the da Vinci, and has continued to expand into orthopedics, spine, and now ophthalmology. As technology and robotics systems continue to advance, we can expect to see new applications emerge to meet the demands of patients.

In 2026 and beyond, actionable data collection will be the cornerstone of surgical robotic advancement, not just powering devices but creating continuous feedback loops that will enhance the skills of every surgeon and improve the efficiency and precision of every procedure. As we continue to feed AI systems with data from real-world operations, each procedure will fuel more intelligent robotic systems and platforms that are inherently scalable, delivering an elevated level of care and expanding access to groundbreaking surgery for millions of patients as a result.

Thu, Mar 5, 2026

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