Andersonhanna1187
Arabian horses are not only one of the most ancient breeds in the world, but they are also one of the most appreciated racehorse breeds today. Nintedanib ic50 The breed generates attention for their phenomenal endurance ability and their capability for gallop racing. Consequently, genetic testing to select the best individuals is attracting ever increasing interests from the Arabian industry. As such, the aim of this study was to further investigate associations between performance and variation at candidate genes suspected of having a key role in Arabian gallop racing performance. Generalized linear models were fit to test associations between eight candidate gene variants and a variety of gallop racing performance traits in a sample of Arabian racehorses (n = 287). Two genes, solute carrier family 16 member 1 (SLC16A1) and acyl-CoA oxidase 1 (ACOX1), were significantly associated with multiple gallop racing performance traits, whereas another gene, actinin alpha 3 (ACTN3) was associated with best race distance. Previously established associations between these three genes and equine metabolism strongly suggest further investigation of these genes, and their relationship with Arabian horse performance is warranted.A 7-year-old Quarter Horse stallion was admitted at the hospital with a history of ejaculatory failure for 12 months. The stallion revealed no physical or psychological abnormalities, as well as, normal libido and erection. In addition, there were no abnormalities in accessory sex glands or the aorta artery detected by transrectal ultrasonography. Based on clinical findings, the stallion was diagnosed with an idiopathic ejaculatory dysfunction; therefore, alternative attempts of semen collection were performed. Thermal compress on the basis of the stallion's penis, semen collection on the ground, and imipramine hydrochloride treatment were performed unsuccessfully. However, a protocol consisted by the association of imipramine (3 mg/kg/v.o.), detomidine (0.02 mg/kg/i.v.), and oxytocin (20 U.I./i.v.) successfully produced ejaculation in this stallion. The semen obtained from ex copula ejaculation of the stallion was collected using a collector cup lined with a plastic bag, which was positioned over the prepuce of the stallion. Semen with good sperm quality (87% of total motility) was obtained using the proposed protocol. Semen was then processed for cryopreservation and post-thawed semen samples presented satisfactory sperm parameters. In conclusion, the association of imipramine, detomidine, and oxytocin can be considered for ex copula semen collection in stallions.This study aimed to assess the effects of sodium caseinate and cholesterol to extenders used for stallion semen cooling. Two ejaculates from 19 stallions were extended to 50 million/mL in four different extenders and cooled-stored for 24 hours at 5°C. The extender 1 (E1) consisted of a commercially available skim milk-based extender. The extender 2 (E2) consisted of E1 basic formula with the milk component being replaced by sodium caseinate (20 g/L). The extender 3 (E3) consisted of E1 basic formula added to cholesterol (1.5 mg/120 million sperm). The extender 4 (E4) consisted of a combination of the E2 added to cholesterol. At 24 hours after cooling, sperm motility parameters, plasma membrane stability (PMS), and mitochondrial membrane potential were assessed. In addition, cooled semen (1 billion sperm at 5°C/24 hours) from one "bad cooler" and one "good cooler" stallions, split into four extenders was used to inseminate 30 light breed mares (30 estrous cycles/extender). Milk-based extenders (E1 and E2) had superior sperm kinetics than E3 and E4 (P .05). In conclusion, the association of sodium caseinate and cholesterol improved fertility of bad cooler stallion semen cooled for 24 hours.Frozen sections provide a basis for rapid intraoperative diagnosis that can guide surgery, but the diagnoses often challenge pathologists. Here we propose a rule-based system to differentiate thyroid nodules from intraoperative frozen sections using deep learning techniques. The proposed system consists of three components (1) automatically locating tissue regions in the whole slide images (WSIs), (2) splitting located tissue regions into patches and classifying each patch into predefined categories using convolutional neural networks (CNN), and (3) integrating predictions of all patches to form the final diagnosis with a rule-based system. To be specific, we fine-tune the InceptionV3 model for thyroid patch classification by replacing the last fully connected layer with three outputs representing the patch's probabilities of being benign, uncertain, or malignant. Moreover, we design a rule-based protocol to integrate patches' predictions to form the final diagnosis, which provides interpretability for the proposed system. On 259 testing slides, the system correctly predicts 95.3% (61/64) of benign nodules and 96.7% (148/153) of malignant nodules, and classify 16.2% (42/259) slides as uncertain, including 19 benign and 16 malignant slides, which are a sufficiently small number to be manually examined by pathologists or fully processed through permanent sections. Besides, the system allows the localization of suspicious regions along with the diagnosis. A typical whole slide image, with 80, 000 × 60, 000 pixels, can be diagnosed within 1 min, thus satisfying the time requirement for intraoperative diagnosis. To the best of our knowledge, this is the first study to apply deep learning to diagnose thyroid nodules from intraoperative frozen sections. The code is released at https//github.com/PingjunChen/ThyroidRule.Deregulated splicing machinery components have shown to be associated with the development of several types of cancer and, therefore, the determination of such alterations can help the development of tumor-specific molecular targets for early prognosis and therapy. Determining such splicing components, however, is not a straightforward task mainly due to the heterogeneity of tumors, the variability across samples, and the fat-short characteristic of genomic datasets. In this work, a supervised machine learning-based methodology is proposed, allowing the determination of subsets of relevant splicing components that best discriminate samples. The methodology comprises three main phases first, a ranking of features is determined by means of applying feature weighting algorithms that compute the importance of each splicing component; second, the best subset of features that allows the induction of an accurate classifier is determined by means of conducting an effective heuristic search; then the confidence over the induced classifier is assessed by means of explaining the individual predictions and its global behavior.