Tibial Plateau Fracture Clinical Trial
Official title:
Operative or Nonoperative Management of Tibial Plateau Fractures? Application of Machine Learning Algorithms to Assist in Treatment Decision
To adopt a machine learning technique to decide whether operative or non-operative treatment will result in the best patient-outcome.
The overall goal is to adopt a machine learning technique to decide whether operative or non-operative treatment will result in the best patient-outcome. The primary objectives are to identify the most suitable machine learning algorithm to predict the best treatment for future patients. Whether conservative or operative treatment will lead to the best patient outcome, will be decided on the predicted KOOS score. Several input factors, such as treatment (conservative or operative), number of fracture fragments, location of the fracture, soft tissue involvement,…for each patient will be used as training data for the algorithm. Some of these input data will be derived from CT-scans. Therefore, the CT scans will be segmented in Mimics, for which UZ Leuven recently purchased licenses. The output variable of the training data will be the KOOS score of each patient. Based on the input and output variable, the algorithm will determine a relation between these. For future patients of which the input variable are known, the output variable (=KOOS score) will be predicted both in case of operative and conservative treatment. We hypothesize that the prediction will be improved by adding more input data over time. To secondary objective is to identify clinical and radiological factors that help predicting the best treatment for future patients. As an outlook, the machine learning technique could be implemented in the future in clinical practice and utilized as a patient-specific planning tool for tibial plateau fracture management by aiding the surgeon to select the best treatment for a given case. The collected data in this registry will be used to validate the machine learning model. Patients will not yet be treated based on the results of the developed model, the trauma surgeon is responsible to decide which treatment option is best for the patient. ;
Status | Clinical Trial | Phase | |
---|---|---|---|
Withdrawn |
NCT04639011 -
Duloxetine Tibial Plateau
|
Phase 4 | |
Recruiting |
NCT05571449 -
Efficacy of the Use of 3D Printing Models in the Treatment of Tibial Plateau Fractures: a Randomized Clinical Trial
|
N/A | |
Not yet recruiting |
NCT04314570 -
Saphenous Nerve Block After Tibial Plateau ORIF
|
N/A | |
Enrolling by invitation |
NCT05521958 -
Gene Expression in Lower Extremity Acute Traumatic Compartment Syndrome
|
N/A | |
Not yet recruiting |
NCT05397327 -
3D Virtual Planning for Tibial Plateau Fractures
|
N/A | |
Completed |
NCT03562364 -
Early Advanced Weight Bearing for Peri-articular Knee and Pilon Injuries
|
N/A | |
Completed |
NCT02168959 -
Continuous Femoral Nerve Block With a Tibial Plateau Fracture
|
Phase 0 |