首页> 外文期刊>British Journal of Obstetrics and Gynaecology >Sonographic prediction of malignancy in adnexal masses using an artificial neural network.
【24h】

Sonographic prediction of malignancy in adnexal masses using an artificial neural network.

机译:使用人工神经网络对附件包块中的恶性肿瘤进行超声检查预测。

获取原文
获取原文并翻译 | 示例
       

摘要

OBJECTIVE: To generate a neural network algorithm which computes a probability of malignancy score for pre-operative discrimination between malignant and benign adnexal tumours. DESIGN: A retrospective analysis of previously collected data. Information from 75% of the study group was used to train an artificial neural network and the remainder was used for validation. SETTING: The Gynaecological Ultrasound Research Unit at King's College Hospital, London. POPULATION: Sixty-seven women with known adnexal mass who had been examined using transvaginal B-mode ultrasonography and colour Doppler imaging with pulse spectral analysis immediately before surgery. The excised masses were classified histologically as benign (n = 52) or malignant (n = 15), of which three were borderline. METHODS: The variables that were put into the artificial neural network were: age, menopausal status, maximum tumour diameter, tumour volume, locularity, the presence of papillary projections, the presence of random echogenicity, the presence of analysable blood flow velocity waveforms, the peak systolic velocity, time-averaged maximum velocity, the pulsatility index, and resistance index. Histological classification, categorised as benign or malignant, was the output result. RESULTS: A variant of the back propagation method was selected to train the network. The overall architecture of the network with the best performance contained an input layer with four variables (age, time-averaged maximum velocity, papillary projection score and maximum tumour diameter), a hidden layer with three units and an output layer with one. The sensitivity and specificity at the optimum diagnostic decision value for the artificial neural network output (0.45) were 100% (95% CI 78.2%-100%) and 98.1% (95% CI 89.5%-100%), respectively. These values were significantly better than those obtained from the independent use of the resistance index, pulsatility index, time-averaged maximum velocity or peak systolic velocity at their optimum decision values (P < 0.01). CONCLUSION: Artificial neural networks may be used on clinical and ultrasound derived end-points to accurately predict ovarian malignancy. There is a need for a prospective evaluation of this technique using a larger number of patients.
机译:目的:生成一种神经网络算法,计算恶性评分的概率,以在术前区别恶性和良性附件肿瘤。设计:对以前收集的数据进行回顾性分析。来自研究组75%的信息用于训练人工神经网络,其余信息用于验证。地点:伦敦国王学院医院妇科超声研究室。人口:67名具有附件附件肿物的妇女在手术前立即接受了经阴道B型超声检查和彩色多普勒成像及脉搏频谱分析的检查。切除的肿块在组织学上分为良性(n = 52)或恶性(n = 15),其中三个为临界点。方法:输入人工神经网络的变量包括:年龄,绝经状态,最大肿瘤直径,肿瘤体积,局部性,乳头状突起的存在,随机回声的存在,可分析的血流速度波形,收缩期峰值速度,时均最大速度,搏动指数和阻力指数。输出结果是组织学分类,分为良性或恶性。结果:选择了一种反向传播方法来训练网络。具有最佳性能的网络的整体体系结构包含一个输入层,该输入层具有四个变量(年龄,时间平均最大速度,乳头状投射分数和最大肿瘤直径),一个具有三个单元的隐藏层和具有一个单元的输出层。人工神经网络输出(0.45)在最佳诊断决策值下的灵敏度和特异性分别为100%(95%CI 78.2%-100%)和98.1%(95%CI 89.5%-100%)。这些值明显好于在最佳决策值下独立使用阻力指数,搏动指数,时间平均最大速度或收缩期峰值速度得到的值(P <0.01)。结论:人工神经网络可用于临床和超声得出的终点,以准确预测卵巢恶性肿瘤。需要使用大量患者对该技术进行前瞻性评估。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号