Fig. 2: Thermographic image of the leg of a patient treated with external fixation. The colours reflect the temperature of the skin. Algorithms are applied to identify areas with possible infection. This way, thermography can be used by the patient as a point of care technology at home<\/figcaption><\/figure>\nCurrent projects<\/h3>\n In the InterOrtho Research group we have defined a number of projects as part of the Clinical Intelligence project with the ultimate goal of developing a deep learning algorithm for the postoperative monitoring of patients at home. In the following some of these will be presented.<\/p>\n
Home-based monitoring with thermography for detection of postoperative infection<\/h4>\n Thermography may be useful in monitoring surgical sites for infection but has not yet been implemented in telemedicine. As thermography is presently being integrated into mobile phones or can be used as an add-on to standard phones, this technology is opening new possibilities for home-nurses, relatives, or patients to perform infection surveillance.<\/p>\n
The aim of the thermography studies is to examine whether thermography can be used as a homebased postoperative surveillance in orthopaedic patients to detect or predict wound infection. We seek to define a point of care for infection.<\/p>\n
Infection has been estimated to account for 0.5% of hospital budgets in Denmark and represents a significant morbidity to the patient. Today, patients are discharged earlier from hospitals, shifting the postoperative surveillance to the patient\u2019s home. The care is thus transferred from the highly specialised hospital to surveillance by municipality home-nurses and general practitioners. During this shift, both information and knowledge of postoperative care is often lost, leaving the patient with uncertainty. This uncertainty is enhanced by a lack of agreement on the definition of infection and little evidence of systematic measurement and monitoring of wounds after discharge. Therefore, point of care technologies are important.<\/p>\n
The setup is multidisciplinary, international cross-sectional and longitudinal studies. The thermography studies will focus on orthopaedic patients with external frames (Fig. 2). These patients are at considerable risk of infection during a treatment period of several months, and an infection in the worst-case scenario can be limb threatening. The experience and knowledge we will obtain from this project can be used in general to improve care for patients after surgery in the future.<\/p>\n
Implantable sensors for monitoring bone healing<\/h4>\n In a current experiment we are investigating whether wireless sensors that are implanted on each side of a bone fracture can pave the way for a replacing of X-rays when it comes to observing whether bone healing is progressing as planned (Fig. 3 ). The electrodes send a current through the broken piece of bone and by measuring the electrical resistance that occurs between the electrodes, deviations from normal bone healing might be detected. Preclinical pilot-tests have shown that the technology correlates with bone healing.<\/p>\n
A current challenge stems from the fact that spot checks with X-rays are unable to predict which fractures will not unite, and the diagnosis of non-healing can only be made after six months. The result may be chronic pain or loss of function. With continuous monitoring, it will be possible to make adjustments that can ensure optimal adhesion of the fracture.<\/p>\n
Improved monitoring of bone healing will also have the advantage that, in the future, it will be possible to offer more individually tailored rehabilitation, meaning that the patient\u2019s training and physical activity can be co-ordinated with the progression of the bone healing.<\/p>\n
Motion analysis<\/h4>\n One of the most important daily activities is walking. Ambulation plays a crucial role in the recovery of patients after orthopaedic surgeries and those patients are encouraged to start walking after the surgeries to accelerate the process of recovery. We believe that the changes in quantity and quality of the gait during the post-op period represent the characteristics of the recovery process. Analysing the gait attributes can be used to assess recovery. However, the complexity of gold standard methods for gait analysis has limited their application during the post-op recovery period. A possible solution might be found in wearable sensors or motion capture analysis applying algorithms originally developed for the animation film industry.<\/p>\n
Employing deep learning models for the investigation of the data derived from these sensors may facilitate patients\u2019 home monitoring in the future. Currently, studies in patients after knee arthroplasty are employed. In the future, telemedicine motion caption analysis via mobile phones is predicted to have a huge potential in orthopaedic rehabilitation as motion analysis may be captured and analysed in real time by the mobile phone. Studies are currently being drafted to validate this technique.<\/p>\n
The Dialogue Project<\/h4>\n A key element in our ambitions to create an Artificial Intelligence algorithm for optimising patient flow is developing a communication platform that places the patient at the centre of communication between all parties involved in the process. That can be relatives, general practitioners, physiotherapists, home nurses, social workers, and medical staff at the hospital.<\/p>\n
Through an application on the patient\u2019s smartphone, patients and health professionals across Aalborg University Hospital and Aalborg Municipality will be able to communicate in simple text messages. We want to explore text messaging with the patient as a simple communication tool in rehabilitation after orthopaedic surgery.<\/p>\n
Current communication pathways are slow, inefficient, and cause frustration among both patients and health professionals. In the worst cases it compromises patient safety, when important knowledge is not shared in a timely fashion, or treatment regimens are not understood. After discharge, surgery patients may have questions or concerns leading them to call the general practitioner, home care nurse, or the hospital for answers. Often, they reach a secretary, rather than the specialised healthcare team at the hospital. Organisational barriers between hospital and municipality challenge communication, leading to patients experiencing a lack of coherence in the healthcare system.<\/p>\n
By introducing a text messaging app, where patients, hospital staff, and staff from the municipality can communicate, we believe it will be easier for the patient to get clarification on questions, and the co-ordination and knowledge sharing between the hospital and the municipality will be more flexible and individualised. At the same time, the patient is placed at the centre of the dialogue, which we hope can help empower patients and relatives, and maybe even health professionals across sectors. Future research will look into if these dialogue data can be used as data points in prediction models.<\/p>\nFig. 3: Nothing much has happened since the invention of radiology in identifying the healing of fractures, but sensor technology is predicted to outperform radiology in the future. With radiology, non-healing fractures can only be diagnosed after six months. With sensor technology we envision that failed healing can be detected after a few weeks, allowing for early treatment intervention<\/figcaption><\/figure>\nDiversity in skills and knowledge is needed<\/h3>\n We strive for high diversity in our group to provide the needed synergy and expertise to make high-impact innovative research. Our philosophy is that the highest level of domain knowledge is needed both from the clinicians and the engineers. All solutions are patient centred, which dictates a close and day-by-day collaboration between clinicians, patient representatives, and engineers. Our innovation is based on research to provide data for evidence-based decisions when adapting new technology into clinical practice.<\/p>\n
What we do today creates a better tomorrow<\/h3>\n Implantable sensors that use electricity to measure whether a fracture heals as it should and the use of a mobile phone\u2019s camera to predict an upcoming infection may sound like science fiction. Many of the technologies we work with are still at a very early prototype stage and may not be ready for clinical application until many years from now. Nevertheless, it is important that the technologies are developed and adapted based on clinical research.<\/p>\n
Therefore, it is our hope that our work can inspire even closer collaboration between clinicians and engineers, as we believe that only through joint efforts can we create innovative solutions that can meet the health challenges of the future.<\/p>\n
If you would like to know more about our work at the InterOrtho Research Group at Aalborg University Hospital or would like to collaborate with us, please do not hesitate to contact us.<\/p>\n
Initiators of Interdisciplinary Orthopaedics<\/h3>\n Clinical Professor Ole Rahbek, MD, PhD is head of Children\u2019s Orthopaedics at Aalborg University Hospital, Denmark. His main research area has been children\u2019s orthopaedics and how to improve the surgical care of children with disabilities. Optimal surgical care is to prevent surgery if possible and, in the case of surgery, minimising the time the child and family spend in hospital, by the use of digital health solutions.<\/p>\n
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Clinical Professor S\u00f8ren\u202fKold, MD PhD is head of Limb Reconstruction at Aalborg University Hospital, Denmark and is a well renowned international expert in treating highly complex fractures and complications. He has previously introduced new technology from preclinical in vitro and in vivo research into\u202forthopaedic\u202frandomised clinical trials.<\/p>\n
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Associated Professor Ming Shen is leading the AI RF Sensors group at the Department of Electronic Systems, Aalborg University. His current research interests mainly include digital healthcare technologies, especially wireless microsensors and Artificial Intelligence (AI) in orthopaedics.<\/p>\n
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Research collaborators for clinical intelligence<\/h3>\n To create digital solutions for the patient, a broad coalition is needed to cover all aspects of patient care with the aim of implementation after validation.<\/p>\n
Aalborg University:<\/p>\n