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Predicting the prognosis of breast cancer by integrating clinical and microarray data with Bayesian networks.Expression profiling to predict the clinical behaviour of ovarian cancer fails independent evaluationDynamics of HPV vaccination initiation in Flanders (Belgium) 2007-2009: a Cox regression modelDid Large-Scale Vaccination Drive Changes in the Circulating Rotavirus Population in Belgium?Balancing false positives and false negatives for the detection of differential expression in malignancies.The health and economic burden of haemophilia in Belgium: a rare, expensive and challenging disease.The health and economic burden of chickenpox and herpes zoster in Belgium.The health and economic burden of rotavirus disease in Belgium.Mortality in Individuals Treated With Glucose-Lowering Agents: A Large, Controlled Cohort Study.From non school-based, co-payment to school-based, free Human Papillomavirus vaccination in Flanders (Belgium): a retrospective cohort study describing vaccination coverage, age-specific coverage and socio-economic inequalities.The impact of non-financial and financial encouragements on participation in non school-based human papillomavirus vaccination: a retrospective cohort study.Like mother, like daughter? Mother's history of cervical cancer screening and daughter's Human Papillomavirus vaccine uptake in Flanders (Belgium).INCLUSive: integrated clustering, upstream sequence retrieval and motif sampling.Comparison of the PhoPQ regulon in Escherichia coli and Salmonella typhimurium.Cancer during pregnancy: an analysis of 215 patients emphasizing the obstetrical and the neonatal outcomes.New models to predict depth of infiltration in endometrial carcinoma based on transvaginal sonography.Predicting the outcome of pregnancies of unknown location: Bayesian networks with expert prior information compared to logistic regression.Predicting the clinical behavior of ovarian cancer from gene expression profiles.An algorithm including results of gray-scale and power Doppler ultrasound examination to predict endometrial malignancy in women with postmenopausal bleeding.Adaptive quality-based clustering of gene expression profiles.Non-invasive diagnosis of endometriosis based on a combined analysis of six plasma biomarkersMolecular profiling of platinum resistant ovarian cancer: Use of the model in clinical practiceDiagnostic accuracy of varying discriminatory zones for the prediction of ectopic pregnancy in women with a pregnancy of unknown locationM@CBETH: a microarray classification benchmarking toolBody mass index and HER-2 overexpression in breast cancer patients over 50 years of ageThree-dimensional ultrasound assessment of the cervix for predicting time to spontaneous onset of labor and time to delivery in prolonged pregnancyBishop score and ultrasound assessment of the cervix for prediction of time to onset of labor and time to delivery in prolonged pregnancyUltrasound features of different histopathological subtypes of borderline ovarian tumorsIndependent test set performance in the prediction of early relapse in ovarian cancer with gene expression profilesProgesterone receptor in estrogen receptor-positive breast cancer: the association between HER-2 and lymph node involvement is age related
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P50
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Frank De Smet
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Frank De Smet
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Frank De Smet
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Frank De Smet
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Frank De Smet
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Frank De Smet
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Frank De Smet
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Frank De Smet
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0000-0002-0656-5921