To access the full text documents, please follow this link: http://hdl.handle.net/2445/63540

Paediatric pharmacovigilance: use of pharmacovigilance data mining algorithms for signal detection in a safety dataset of a paediatric clinical study conducted in seven African countries
Erhart, Annette; Talisuna, Ambrose Otau; Bassat Orellana, Quique; Karema, Corine; Nabasumba, Carolyn; Nambozi, Michael; Tinto, Halidou; Kremsner, Peter G.; Meremikwu, Martin; Alessandro, Umberto d'; Speybroeck, Niko
BACKGROUND: Pharmacovigilance programmes monitor and help ensuring the safe use of medicines which is critical to the success of public health programmes. The commonest method used for discovering previously unknown safety risks is spontaneous notifications. In this study we examine the use of data mining algorithms to identify signals from adverse events reported in a phase IIIb/IV clinical trial evaluating the efficacy and safety of several Artemisinin-based combination therapies (ACTs) for treatment of uncomplicated malaria in African children. METHODS: We used paediatric safety data from a multi-site, multi-country clinical study conducted in seven African countries (Burkina Faso, Gabon, Nigeria, Rwanda, Uganda, Zambia, and Mozambique). Each site compared three out of four ACTs, namely amodiaquine-artesunate (ASAQ), dihydroartemisinin-piperaquine (DHAPQ), artemether-lumefantrine (AL) or chlorproguanil/dapsone and artesunate (CD+A). We examine two pharmacovigilance signal detection methods, namely proportional reporting ratio and Bayesian Confidence Propagation Neural Network on the clinical safety dataset. RESULTS: Among the 4,116 children (6-59 months old) enrolled and followed up for 28 days post treatment, a total of 6,238 adverse events were reported resulting into 346 drug-event combinations. Nine signals were generated both by proportional reporting ratio and Bayesian Confidence Propagation Neural Network. A review of the manufacturer package leaflets, an online Multi-Drug Symptom/Interaction Checker (DoubleCheckMD) and further by therapeutic area experts reduced the number of signals to five. The ranking of some drug-adverse reaction pairs on the basis of their signal index differed between the two methods. CONCLUSIONS: Our two data mining methods were equally able to generate suspected signals using the pooled safety data from a phase IIIb/IV clinical trial. This analysis demonstrated the possibility of utilising clinical studies safety data for key pharmacovigilance activities like signal detection and evaluation. This approach can be applied to complement the spontaneous reporting systems which are limited by under reporting.
-Farmacovigilància
-Pediatria
-Àfrica
-Drug monitoring
-Pediatrics
-Africa
CC BY (c) Kajungu et al., 2014
http://creativecommons.org/licenses/by/3.0/
Article
Article - Published version
Public Library of Science (PLoS)
         

Show full item record

Related documents

Other documents of the same author

Macintyre, Fiona; Adoke, Yeka; Tiono, Alfred B.; Duong, Tran T.; Mombo-Ngoma, Ghyslain; Bouyou-Akotet, Marielle; Tinto, Halidou; Bassat Orellana, Quique; Issifou, Saadou; Adamy, Marc; Demarest, Helen; Duparc, Stephan; Leroy, Didier; Laurijssens, Bart E.; Biguenet, Sophie; Kibuuka, Afizi; Tshefu, Antoinette; Smith, Melnick; Foster, Chanelle; Leipoldt, Illse; Kremsner, Peter G.; Phuc, Bui Q.; Ouedraogo, Alphonse; Ramharter, Michael; OZ-Piperaquine Study Group
Dellicour, Stephanie; Sevene, Esperança Júlia Pires; McGready, Rose; Tinto, Halidou; Mosha, Domnic; Manyando, Christine; Rulisa, Stephen.; Desai, Meghna; Ouma, Peter; Oneko, Martina; Vala, Anifa; Rupérez, María; Macete, Eusébio; Menéndez, Clara; Nakanabo-Diallo, Seydou; Kazienga, Adama; Valéa, Innocent; Calip, Gregory S.; Augusto, Orvalho; Genton, Blaise; Njunju, Eric M.; Moore, Kerryn A.; Alessandro, Umberto d'; Nosten, François; Ter Kuile, Feiko O.; Stergachis, Andy
Tinto, Halidou; Sevene, Esperança Júlia Pires; Dellicour, Stephanie; Calip, Gregory S.; Alessandro, Umberto d'; Macete, Eusébio; Nakanabo-Diallo, Seydou; Kazienga, Adama; Valéa, Innocent; Sorgho, Hermann; Vala, Anifa; Augusto, Orvalho; Rupérez, María; Menéndez, Clara; Ouma, Peter; Desai, Meghna; Ter Kuile, Feiko O.; Stergachis, Andy
White, Michael T.; Verity, Robert; Griffin, Jamie T.; Asante, Kwaku Poku; Owusu-Agyei, Seth; Greenwood, Brian; Drakeley, Chris; Gesase, Samwel; Lusingu, John; Ansong, Daniel; Adjei, Samuel; Agbenyega, Tsiri; Ogutu, Bernhards; Otieno, Lucas; Otieno, Walter; Agnandji, Selidji Todagbe; Lell, Bertrand; Kremsner, Peter G.; Hoffman, Irving; Martinson, Francis; Kamthunzu, Portia; Tinto, Halidou; Valéa, Innocent; Sorgho, Hermann; Oneko, Martina; Otieno, Kephas; Hamel, Mary J.; Salim, Nahya; Mtoro, Ali; Abdulla, Salim; Aide, Pedro Carlos Paulino; Sacarlal, Jahit; Aponte, John J.; Njuguna, Patricia; Marsh, Kevin; Bejon, Philip; Riley, Eleanor M.; Ghani, Azra C.
Gargano, Nicola; Madrid, Lola; Valentini, Giovanni; Alessandro, Umberto d'; Halidou, Tinto; Sirima, Sodiomon; Tshefu, Antoinette; Mtoro, Ali; Gesase, Samwel; Bassat Orellana, Quique; Eurartesim Dispersible Study Group
 

Coordination

 

Supporters