Theia
Automated Postoperative Wound Assessment and Surgical Site Surveillance through Machine Learning
The World Health Organization estimates 266.2 to 359.5 million surgical operations were performed in 2012, displaying an increase of 38% over the preceding eight years. Surgeries expose patients to an array of possible afflictions in the surgical site, some of which can lead to death. Postoperative wound complications are a significant cause of expense in time and money for hospitals, doctors, insurers, and patients. Hence, an effective method to diagnose the early onset of wound complications is strongly desired. Algorithmically classifying wound images is a difficult task due to the variability in the appearance of wound sites.
We built an artificial intelligence algorithm, called Deepwound, to identify characteristics of a wound from a smartphone image. Our final computational model can accurately identify the presence of nine labels: the presence of a drainage, wound, fibrinous exudate, granulation tissue, surgical site infection, open wound, staples, steri strips, and sutures. Smartphones provide a means to deliver accessible wound care due to their increasing ubiquity. Paired with artificial intelligence, they can provide clinical insight to assist surgeons during postoperative care. We also built mobile application frontend to Deepwound, called Theia, that assists patients in tracking their wound and surgical recovery from the comfort of their home.
According to our literature search, we attained results that surpass the state-of-the-art for the prediction of surgical site infection. Our model achieves scores superior to prior work in this area. This is the first extensive research project that can identify a variety of afflictions and surgical dressings from a single image. Moreover, the mobile application provides a practical way to utilize my sophisticated algorithm.
My team and I have received acclaim for our work at the 2018 Consumer Electronics Show and 2018 Surgical Infection Society Annual Meeting. I was invited to present our work at the 2018 Consumer Electronics Show and our team received a top 10 award at the 2018 Surgical Infection Society Annual Meeting. We are currently in the process of publishing a comprehensive paper regarding our research so others can build upon it.
We are currently working on embedding our deep learning technology onto a mobile device as well as testing various domain-specific architectures for our algorithms. Our solution will be able to provide rapid wound assessment to surgical patients, drastically improving patient outcomes and reducing hospital costs.
- Effective and affordable healthcare services
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