神经切除术
医学
泌尿科
尿失禁
外科
病理
替代医学
作者
Clarence A. Rawlings,Joan R. Coates,P. T. Purinton,Jeanne A. Barsanti,Adriene Carlisle,John E. Oliver
出处
期刊:American Journal of Veterinary Research
[American Veterinary Medical Association]
日期:2005-04-01
卷期号:66 (4): 695-699
被引量:4
标识
DOI:10.2460/ajvr.2005.66.695
摘要
Abstract Objective —To develop a model of low urethral pressure incontinence and compare the relative contributions of the pudendal and hypogastric nerves with urethral function by performing selective neurectomy and ovariohysterectomy in dogs. Animals —19 healthy Foxhounds. Procedure —Dogs were allocated into 2 groups. The first group (10 dogs) underwent bilateral hypogastric neurectomy and ovariohysterectomy and subsequent bilateral pudendal neurectomy. The second group (9 dogs) underwent bilateral pudendal neurectomy and subsequent hypogastric neurectomy and ovariohysterectomy. Urethral pressure profilometry and leak point pressure (LPP) tests were performed before and after each neurectomy. Results —Before surgery, mean ± SD LPP and maximal urethral closure pressure (MUCP) in all dogs were 169.3 ± 24.9 cm H 2 O and 108.3 ± 19.3 cm H 2 O, respectively; these values decreased to 92.3 ± 27 cm H 2 O and 60.7 ± 20.0 cm H 2 O, respectively, after both selective neurectomy surgeries. There was a progressive decline of LPP after each neurectomy; however, MUCP decreased only after pudendal neurectomy. Fifteen dogs had mild clinical signs of urinary incontinence. All dogs appeared to have normal bladder function as indicated by posturing to void and consciously voiding a full stream of urine. Urinary tract infection did not develop in any dog. Conclusions and Clinical Relevance —Hypogastric and pudendal neurectomy and ovariohysterectomy caused a maximum decrease in LPP, whereas pudendal neurectomy caused a maximum decrease in MUCP. Impact on Human Medicine —This model may be useful for evaluation of treatments for improving urinary control in postmenopausal women. ( Am J Vet Res 2005;66:695–699)
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