研究目的
Investigating the influence of noise, signal dimensionality, and different sampling patterns on the accuracy of surrogate-based estimation of respiratory motion using multidimensional signals derived from range images.
研究成果
The use of multidimensional signals significantly improves the motion estimation accuracy compared to one-dimensional signals, but the accuracy is highly affected by noise. Small differences exist between different multidimensional sampling patterns, and automatically determined optimal combinations of points and lines do not lead to accuracy improvements.
研究不足
The study is based on a relatively small number of data sets (28) and uses simulated range images instead of real depth measurements, which may affect the generalizability of the findings to clinical practice.