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Bayesian neural networks for bivariate binary data: an application to prostate cancer study.

机译:用于双变量二进制数据的贝叶斯神经网络:在前列腺癌研究中的应用。

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Prostate cancer is one of the most common cancers in American men. The cancer could either be locally confined, or it could spread outside the organ. When locally confined, there are several options for treating and curing this disease. Otherwise, surgery is the only option, and in extreme cases of outside spread, it could very easily recur within a short time even after surgery and subsequent radiation therapy. Hence, it is important to know, based on pre-surgery biopsy results how likely the cancer is organ-confined or not.The paper considers a hierarchical Bayesian neural network approach for posterior prediction probabilities of certain features indicative of non-organ confined prostate cancer. In particular, we find such probabilities for margin positivity (MP) and seminal vesicle (SV) positivity jointly. The available training set consists of bivariate binary outcomes indicating the presence or absence of the two. In addition, we have certain covariates such as prostate specific antigen (PSA), gleason score and the indicator for the cancer to be unilateral or bilateral (i.e. spread on one or both sides) in one data set and gene expression microarrays in another data set. We take a hierarchical Bayesian neural network approach to find the posterior prediction probabilities for a test and validation set, and compare these with the actual outcomes for the first data set. In case of the microarray data we use leave one out cross-validation to access the accuracy of our method. We also demonstrate the superiority of our method to the other competing methods through a simulation study. The Bayesian procedure is implemented by an application of the Markov chain Monte Carlo numerical integration technique. For the problem at hand, our Bayesian bivariate neural network procedure is shown to be superior to the classical neural network, Radford Neal's Bayesian neural network as well as bivariate logistic models to predict jointly the MP and SV in a patient in both the data sets as well as in the simulation study.
机译:前列腺癌是美国男性中最常见的癌症之一。癌症可能局限在局部,也可能扩散到器官外部。当局部受限时,有多种选择可以治疗和治愈该疾病。否则,手术是唯一的选择,并且在极端情况下,即使在手术和随后的放射治疗之后,在很短的时间内外扩散也很容易复发。因此,重要的是要根据术前活检结果了解癌症是否可能局限于器官内。本论文考虑了一种分级贝叶斯神经网络方法,用于某些特征的后验预测概率,这些特征可指示非器官局限性前列腺癌。特别是,我们共同发现了边缘阳性(MP)和精囊(SV)阳性的可能性。可用的训练集由双变量二元结果组成,指示两者的存在与否。此外,我们在某些数据集中具有某些协变量,例如前列腺特异性抗原(PSA),格里森评分和癌症指标是单侧或双侧(即在一侧或两侧扩散),而在另一组数据中的基因表达微阵列。我们采用分级贝叶斯神经网络方法来找到测试和验证集的后验预测概率,并将其与第一个数据集的实际结果进行比较。对于微阵列数据,我们使用留一法交叉验证来访问我们方法的准确性。我们还通过仿真研究证明了我们的方法相对于其他竞争方法的优越性。贝叶斯过程通过马尔可夫链蒙特卡洛数值积分技术的应用来实现。对于当前的问题,我们的贝叶斯双变量神经网络程序显示出优于经典神经网络,Radford Neal的贝叶斯神经网络以及双变量逻辑模型,可以在两个数据集中共同预测患者的MP和SV以及在模拟研究中。

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