Enshaei A, Robson C N, Edmondson R J
Medical School, Northern Institute for Cancer Research, University of Newcastle Upon Tyne, Newcastle upon Tyne, UK.
Chair of Gynaecological Oncology, Faculty Institute for Cancer Sciences, University of Manchester, Manchester Academic Health Science Centre, St. Mary's Hospital, Manchester, UK.
Ann Surg Oncol. 2015 Nov;22(12):3970-5. doi: 10.1245/s10434-015-4475-6. Epub 2015 Mar 10.
The ability to provide accurate prognostic and predictive information to patients is becoming increasingly important as clinicians enter an era of personalized medicine. For a disease as heterogeneous as epithelial ovarian cancer, conventional algorithms become too complex for routine clinical use. This study therefore investigated the potential for an artificial intelligence model to provide this information and compared it with conventional statistical approaches.
The authors created a database comprising 668 cases of epithelial ovarian cancer during a 10-year period and collected data routinely available in a clinical environment. They also collected survival data for all the patients, then constructed an artificial intelligence model capable of comparing a variety of algorithms and classifiers alongside conventional statistical approaches such as logistic regression.
The model was used to predict overall survival and demonstrated that an artificial neural network (ANN) algorithm was capable of predicting survival with high accuracy (93 %) and an area under the curve (AUC) of 0.74 and that this outperformed logistic regression. The model also was used to predict the outcome of surgery and again showed that ANN could predict outcome (complete/optimal cytoreduction vs. suboptimal cytoreduction) with 77 % accuracy and an AUC of 0.73.
These data are encouraging and demonstrate that artificial intelligence systems may have a role in providing prognostic and predictive data for patients. The performance of these systems likely will improve with increasing data set size, and this needs further investigation.
随着临床医生进入个性化医疗时代,向患者提供准确的预后和预测信息的能力变得越来越重要。对于像上皮性卵巢癌这样异质性的疾病,传统算法对于常规临床应用来说过于复杂。因此,本研究调查了人工智能模型提供此类信息的潜力,并将其与传统统计方法进行比较。
作者创建了一个包含10年间668例上皮性卵巢癌病例的数据库,并收集了临床环境中常规可得的数据。他们还收集了所有患者的生存数据,然后构建了一个能够将多种算法和分类器与逻辑回归等传统统计方法进行比较的人工智能模型。
该模型用于预测总生存期,结果表明人工神经网络(ANN)算法能够以93%的高准确率和0.74的曲线下面积(AUC)预测生存期,且这一表现优于逻辑回归。该模型还用于预测手术结果,结果再次表明ANN能够以77%的准确率和0.73的AUC预测结果(完全/最佳细胞减灭术与次优细胞减灭术)。
这些数据令人鼓舞,表明人工智能系统可能在为患者提供预后和预测数据方面发挥作用。随着数据集规模的增加,这些系统的性能可能会提高,这需要进一步研究。