医学
腹膜炎
超声科
腹部超声检查
病态的
放射科
外科
体格检查
前瞻性队列研究
普通外科
内科学
作者
Shyr‐Chyr Chen,Fang‐Yue Lin,Yeu‐Sheng Hsieh,Wei-Jao Chen
出处
期刊:Archives of Surgery
[American Medical Association]
日期:2000-02-01
卷期号:135 (2): 170-170
被引量:29
标识
DOI:10.1001/archsurg.135.2.170
摘要
Peritonitis is a well-known indication for surgery, but its preoperative cause usually is not established. We hypothesize that abdominal ultrasonography is superior to the clinical impression of the surgeon in detecting the cause of peritonitis.A prospective case series.A major university hospital in Taiwan, Republic of China.One hundred two patients with a diagnosis of peritonitis admitted to the Department of Emergency Medicine, National Taiwan University Hospital, Taipei, were included in this study. All 102 patients underwent an abdominal ultrasonographic examination; and the ultrasonographic findings of these patients were classified into 2 categories: positive findings and normal screening results. The accuracy of clinical impression in detecting the cause of peritonitis was compared with the accuracy of abdominal ultrasonography.Ultrasonography and clinical impression accurately diagnosed the peritonitis in 85 (83.3%) and 52 (51.0%) of the patients, respectively. The difference between ultrasonography and clinical impression in the diagnosis of peritonitis was significant (P<.001). Among 45 patients without a preoperative clinical diagnosis, a diagnosis was made by ultrasonography for 32 (71%) of them. There were a total of 98 patients with positive ultrasonographic findings, and 4 patients had normal screening results. Of the 98 patients with positive ultrasonographic findings undergoing surgery, all had abdominal pathological characteristics. The 4 patients with normal screening results received nonoperative treatment.Ultrasonography is a more sensitive technique than clinical judgment in diagnosing peritonitis. Ultrasonography may be a useful diagnosing modality in patients with peritonitis in whom the clinical cause is unclear.
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