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Infinite recommends and supports Utilization Management Solution which analyses patient medical records extracted from various standard EMR/EHR applications. It performs advanced semantic analysis of textual records considering all intricacies of the medical domain. The solution takes advantage of the use of multiple medical terminologies and semantic dictionaries. Once relevant clinical facts are extracted, they can be further analyzed to build models predicting the appropriateness of certain types of care with the help of machine learning algorithms trained on historical data.