Title : From Open Data to Actionable Knowledge

Presenter Chris van Aart
Abstract In this talk I will address four topics: 1: “How to save lives with linked open data”. Preliminary results from The Open Data Exchange Project (collaboration between Municipality of Amsterdam, UVA, VU, de Waag and 2CoolMonkeys). Combining data from various open and closed open data sources might light to more adequate crisis response. 2: “knowing a GPS coordinate is useless “: The challenges with open geo data and location-based services, including projections, multi-lines, polygons, zoom levels and geo-based reasoning. 3: "There are more conferences on Open (Governmental) Data than there are Useful open Data sets”. The Open (Big) Data promises and opportunities, including the ever growing list of Open (Governmental) Data objections. 4: “What gets measured gets managed”. The internet of Quantified things, including how self-trackers and city sensor grids can lead to other behaviour.

Title : Knowledge-based Patient Data Generation

Presenter Zhisheng Huang
Abstract The development and investigation of medical applications require patient data from various Electronic Health Records (EHR) or Clinical Records (CR). However, in practice, patient data is and should be protected and monitored to avoid unauthorized access or publicity, because of many reasons including privacy, security, ethics, and confidentiality. Thus, many researchers and developers encounter the problem to access required patient data for their research or make patient data available for example to demonstrate the reproducibility of their results. In this talk, we propose a knowledge-based approach of synthesizing large scale patient data. Our main goal is to make the generated patient data as realistic as possible, by using domain knowledge to control the data generation process. Such domain knowledge can be collected from biomedical publications such as PubMed, from medical textbooks, or web resources (e.g. Wikipedia and medical websites). Collected knowledge is formalized in the Patient Data Definition Language (PDDL) for the patient data generation. We have implemented the proposed approach in our Advanced Patient Data Generator (APDG). We have used APDG to generate large scale data for breast cancer patients in the experiments of SemanticCT, a semantically-enabled system for clinical trials. The results show that the generated patient data are useful for various tests in the system.