https://www.selleckchem.com/products/erastin.html nt. Continuity of care is challenging when transferring patients across palliative care settings. These transfers are common due to the complexity of palliative care, which has increased significantly since the advent of palliative care services. It is unclear how palliative care services and professionals currently collaborate and communicate to ensure the continuity of care across settings, and how patient and family members are involved. To explore healthcare professionals' experiences regarding the communicative aspects of inter-professional collaboration and the involvement of patient and family members. Qualitative design, including focus group discussions. The study focused on one palliative care network in Belgium and involved all palliative care settings hospital, hospital's palliative care unit, home care, nursing home. Nine group discussions were conducted, with diverse professionals ( = 53) from different care settings. Timely and effective inter-professional information exchange was consited palliative care in regional networks.Head injury models are notoriously time consuming and resource demanding in simulations, which prevents routine application. Here, we extend a convolutional neural network (CNN) to instantly estimate element-wise distribution of peak maximum principal strain (MPS) of the entire brain (>36 k speedup accomplished on a low-end computing platform). To achieve this, head impact rotational velocity and acceleration temporal profiles are combined into two-dimensional images to serve as CNN input for training and prediction of MPS. Compared with the directly simulated counterparts, the CNN-estimated responses (magnitude and distribution) are sufficiently accurate for 92.1% of the cases via 10-fold cross-validation using impacts drawn from the real world (n = 5661; range of peak rotational velocity in augmented data extended to 2-40 rad/sec). The success rate further improves to 97.1% for