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1.
Stud Health Technol Inform ; 180: 194-8, 2012.
Article in English | MEDLINE | ID: mdl-22874179

ABSTRACT

Because of the ever-increasing amount of information in patients' EHRs, healthcare professionals may face difficulties for making diagnoses and/or therapeutic decisions. Moreover, patients may misunderstand their health status. These medical practitioners need effective tools to locate in real time relevant elements within the patients' EHR and visualize them according to synthetic and intuitive presentation models. The RAVEL project aims at achieving this goal by performing a high profile industrial research and development program on the EHR considering the following areas: (i) semantic indexing, (ii) information retrieval, and (iii) data visualization. The RAVEL project is expected to implement a generic, loosely coupled to data sources prototype so that it can be transposed into different university hospitals information systems.


Subject(s)
Data Mining/methods , Database Management Systems , Electronic Health Records , Natural Language Processing , User-Computer Interface , France
2.
Stud Health Technol Inform ; 216: 564-8, 2015.
Article in English | MEDLINE | ID: mdl-26262114

ABSTRACT

Recruitment of patients in clinical trials is nowadays preoccupying, as the inclusion rate is particularly low. The main identified factors are the multiplicity of open clinical trials, the high number and complexity of eligibility criteria, and the additional workload that a systematic search of the clinical trials a patient could be enrolled in for a physician. The principal objective of the ASTEC project is to automate the prescreening phase during multidisciplinary meetings (MDM). This paper presents the evaluation of a computerized recruitment support systems (CRSS) based on semantic web approach. The evaluation of the system was based on data collected retrospectively from a 6 month period of MDM in Urology and on 4 clinical trials of prostate cancer. The classification performance of the ASTEC system had a precision of 21%, recall of 93%, and an error rate equal to 37%. Missing data was the main issue encountered. The system was designed to be both scalable to other clinical domains and usable during MDM process.


Subject(s)
Clinical Trials as Topic/methods , Data Mining/methods , Electronic Health Records/classification , Internet , Patient Selection , Semantics , Eligibility Determination/methods , France , Machine Learning , Natural Language Processing , Vocabulary, Controlled
3.
PLoS One ; 8(9): e71991, 2013.
Article in English | MEDLINE | ID: mdl-24039730

ABSTRACT

INTRODUCTION: Case-based reasoning (CBR) is an emerging decision making paradigm in medical research where new cases are solved relying on previously solved similar cases. Usually, a database of solved cases is provided, and every case is described through a set of attributes (inputs) and a label (output). Extracting useful information from this database can help the CBR system providing more reliable results on the yet to be solved cases. OBJECTIVE: We suggest a general framework where a CBR system, viz. K-Nearest Neighbour (K-NN) algorithm, is combined with various information obtained from a Logistic Regression (LR) model, in order to improve prediction of access to the transplant waiting list. METHODS: LR is applied, on the case database, to assign weights to the attributes as well as the solved cases. Thus, five possible decision making systems based on K-NN and/or LR were identified: a standalone K-NN, a standalone LR and three soft K-NN algorithms that rely on the weights based on the results of the LR. The evaluation was performed under two conditions, either using predictive factors known to be related to registration, or using a combination of factors related and not related to registration. RESULTS AND CONCLUSION: The results show that our suggested approach, where the K-NN algorithm relies on both weighted attributes and cases, can efficiently deal with non relevant attributes, whereas the four other approaches suffer from this kind of noisy setups. The robustness of this approach suggests interesting perspectives for medical problem solving tools using CBR methodology.


Subject(s)
Decision Making, Computer-Assisted , Kidney Transplantation , Waiting Lists , Age Factors , Algorithms , Female , Humans , Kidney Diseases/surgery , Logistic Models , Male , Pattern Recognition, Automated , Registries
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