Chest tube blood loss was quantified postoperatively in the first

Chest tube blood loss was quantified postoperatively in the first 24 h. Coagulation parameters were recorded at intensive care unit admission and in the patient’s first 24 h. Thromboembolic

complications were also ascertained.

RESULTS: Seventy-seven patients out of the 677 studied (11.4%) were included: ARS-1620 price PCC was solely administered in 24 patients (group 0, fresh frozen plasma in 26 (group II) and both in 27 (group III). The mean dose of PCC was 10.0 Ul/kg +/- 3.5 for group I vs 14.1 Ul/kg +/- 11.2 for group III (P = 0.09). Initial blood loss in the first hour was different between the three groups (P = 0.05): 224 +/- 131 ml for group I, 369 +/- 296 ml for group II and 434 +/- 398 ml for group III. Only group I vs group III presented a significant difference (P = 0.02). Variations of blood loss over time were no different according to the treatment groups (P = 0.12). Reductions in blood loss expressed in percentage showed no difference between the three groups after 2 h: 54.5% (68.6-30.8) for group I; 45.0% (81.6-22.2) for group II; 57.6 (76.0-2.1) for group III; (P= 0.89). Re-exploration for bleeding involved 1 patient in group I (4%), 2 in group 11 (8%) and 10 in group III (37%) (P = 0.002). Except for fibrinogen, variations of prothrombin time, activated

partial thromboplastin time and platelets with time were not different according to the treatment groups. Cerebral infarction occurred in one patient in group II.

CONCLUSIONS: Administration of low-dose of PCC significantly decreased postoperative bleeding after CPB.”
“This BMS-754807 order paper presents registration via embedded maps (REM), a deformable registration algorithm for images with varying topology. The algorithm represents 3-D images as 4-D manifolds in a Riemannian space (referred to as embedded maps). Registration is performed as a surface

evolution matching one embedded map to another using a diffusion process. The approach differs from those existing in that it takes an a priori estimation of image regions where topological changes are present, for example lesions, and generates a dense vector field representing both the shape and intensity changes necessary to match the images. The algorithm outputs both a diffeomorphic deformation field and an intensity displacement which corrects the intensity difference caused by topological changes. Multiple sets of https://www.selleckchem.com/products/BI6727-Volasertib.html experiments are conducted on magnetic resonance imaging (MRI) with lesions from OASIS and ADNI datasets. These images are registered to either a brain template or images of healthy individuals. An exemplar case registering a template to an MRI with tumor is also given. The resulting deformation fields were compared with those obtained using diffeomorphic demons, where topological changes are not modeled. These sets of experiments demonstrate the efficacy of our proposed REM method for registration of brain MRI with severe topological differences.

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