2020
DOI: 10.21203/rs.3.rs-41910/v1
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Adherence predictor variables in AIDS patients: An empirical study using the data mining-based RFM model

Abstract: Background Highly active antiretroviral therapy (ART) is still the only effective method to stop the disease progression in acquired immunodeficiency syndrome (AIDS) patients. However, poor adherence to the therapy makes it ineffective. In this work, we construct an adherence prediction model of AIDS patients using the classical recency, frequency and monetary value (RFM) model in the data mining-based customer relationship management model to obtain adherence predictor variables. Methods We cleaned 257305 d… Show more

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