Publications by authors named "Julia Wolleb"

The eye and the heart are two closely interlinked organs, and many diseases affecting the cardiovascular system manifest in the eye. To contribute to the understanding of blood flow propagation towards the retina, we developed a method to acquire electrocardiogram (ECG) coupled time-resolved dynamic optical coherence tomography (OCT) images. This method allows for continuous synchronised monitoring of the cardiac cycle and retinal blood flow dynamics.

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Article Synopsis
  • - The pilot study aims to create machine learning models that can predict BMI changes for up to 5 years after bariatric surgery, improving preoperative obesity treatment and patient care.
  • - Conducted from January 2012 to December 2021 in Switzerland, the study involved analyzing data from over 1,100 patients who underwent obesity surgeries, focusing on those with complete pre and postoperative information.
  • - The results show reliable BMI predictions with low root mean square error values, highlighting the study's effectiveness in forecasting weight outcomes and the development of a web-based calculator for healthcare professionals.
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Background: Anastomotic leakage (AL), a severe complication following colorectal surgery, arises from defects at the anastomosis site. This study evaluates the feasibility of predicting AL using machine learning (ML) algorithms based on preoperative data.

Methods: We retrospectively analyzed data including 21 predictors from patients undergoing colorectal surgery with bowel anastomosis at four Swiss hospitals.

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Hospitals are facing difficulties in predicting, evaluating, and managing cost-affecting parameters in patient treatments. Inaccurate cost prediction leads to a deficit in operational revenue. This study aims to determine the ability of Machine Learning (ML) algorithms to predict the cost of care in bariatric and metabolic surgery and develop a predictive tool for improved cost analysis.

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Purpose: Automated distinct bone segmentation from CT scans is widely used in planning and navigation workflows. U-Net variants are known to provide excellent results in supervised semantic segmentation. However, in distinct bone segmentation from upper-body CTs a large field of view and a computationally taxing 3D architecture are required.

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