Department of Abdominal Surgery, University Clinical Centre Maribor, Ljubljanska 5, Maribor, Slovenia.
Dig Dis Sci. 2010 Nov;55(11):3252-61. doi: 10.1007/s10620-010-1155-z. Epub 2010 Feb 26.
The aim of our study was to determine whether learning vector quantization neural networks could be used to predict liver metastases after a gastric cancer surgery.
The prediction of tumor recurrence is invaluable for tailoring specific treatment and follow-up strategies for gastric cancer patients. At present, it is still impossible to make reliable predictions of tumor progression. The use of complex mathematical models such as neural networks has already been implemented for the study of various pathophysiological mechanisms, but to date they have never been used for predicting liver metastases after gastric cancer resection.
A total of 213 patients operated for gastric cancer between 1999 and 2005 were included in our study. They were stratified in a model development (140 patients) and validation group (73 patients). With the use of an auxiliary regression network, seven clinicopathological variables were selected to predict liver metastases.
Forty-one patients developed liver metastases (19.2%). The longest follow-up was 2,754 days. Most liver metastases occurred in the first 799 days after discharge. All predictions were compared to actual recurrences with a two by two contingence table. The determined sensitivity and specificity for the development sample were 71 and 96.1%, respectively. The values for the test sample were 66.7 and 97.1%, respectively. The significance of the model was determined using various post-hoc tests, which all confirmed the effectiveness of our model.
The presented model exhibited a high negative predictive value and reasonable high sensitivity for liver metastases. To improve sensitivity, the inclusion of more patients and perhaps biological markers is still necessary.
我们的研究旨在确定学习向量量化神经网络是否可用于预测胃癌手术后的肝转移。
肿瘤复发的预测对于为胃癌患者量身定制特定的治疗和随访策略非常重要。目前,仍然不可能对肿瘤进展做出可靠的预测。神经网络等复杂数学模型的使用已经用于研究各种病理生理机制,但迄今为止,它们从未用于预测胃癌切除术后的肝转移。
我们的研究共纳入了 1999 年至 2005 年间接受胃癌手术的 213 名患者。他们被分为模型开发组(140 名患者)和验证组(73 名患者)。使用辅助回归网络,选择了七个临床病理变量来预测肝转移。
41 名患者发生了肝转移(19.2%)。最长随访时间为 2754 天。大多数肝转移发生在出院后 799 天内。所有预测均与实际复发情况进行了二乘二的列联表比较。在开发样本中确定的敏感性和特异性分别为 71%和 96.1%。测试样本的相应值分别为 66.7%和 97.1%。使用各种事后检验确定了模型的显著性,所有检验均证实了我们模型的有效性。
所提出的模型对肝转移具有较高的阴性预测值和合理的高敏感性。为了提高敏感性,仍然需要纳入更多患者和可能的生物标志物。