The effects of harvest and different processing methods on the anti-thrombin activity of Poecilobdella manillensis were respectively studied. The indicators included processing methods (vacuum freeze drying, fresh homogenate, drying under sunlight, freezing, scalding, baking under different temperatures), different parts (entire body, cephalon, pygidium, exudate) and body weights (≤10, 10-20, 20-30, 30-40, ≥40 g). The anti-thrombin activities of P. manillensis with different processing methods were evaluated by direct anti-thrombin titration. The results indicated that the processing methods significantly affected the anti-thrombin activities of P. manillensis. Among the 11 groups, the anti-thrombin activity of P. manillensis processed with vacuum freeze drying (1 303.56 U•g⁻¹) was significantly highest than the other groups (P<0.05), and that processed with baking under 90 ℃ (15.44 U•g⁻¹) was the lowest. The anti-thrombin activity of the cephalon of P. manillensis (226.42 U•g⁻¹) was the highest, and that of the pygidium (102.12 U•g⁻¹) was lowest; the anti-thrombin activities for different body weights were significantly different (P<0.05); and among the five groups, the body weight of ≤10 g (328.86 U•g⁻¹) was the highest (P<0.05), and the body weight of ≥40 g (87.71 U•g⁻¹) was the lowest. In conclusion, harvest and different processing methods had a significant impact on the anti-thrombin activities of P. manillensis. In the study, for the optimal processing method for P. manillensis, the body weight between 20-30 g is recommended, and the vacuum freeze drying is preferred, which is followed by the drying under sunlight.

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http://dx.doi.org/10.4268/cjcmm20161118DOI Listing

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