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Toward better prediction of recurrence for Cushing's disease:a factorization-machine based neural approach

机译:为了更好地预测缓冲疾病的复发:基于分解机的神经方法

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Cushing's disease (CD) is a rare disease that occurs in 1.2-1.4 persons per million population per year. Recurrence prediction after transsphenoidal surgery (TSS) is important for determining individual treatment and follow-up strategies. Between 2000 and 2017, 354 CD patients with initial postoperative remission and long-term follow-up data were enrolled from Peking union medical college hospital (PUMCH) to predict recurrence, and PUMCH is one of the largest CD treatment centers in the world. We first investigated the effect of a factorization machine (FM)-based neural network to predict recurrence after TSS for CD. This method could automatically reduce a portion of the cross-feature selection work with acceptable parameters. We conducted a performance comparison of various algorithms on the collected dataset. To address the lack of interpretability of neural network models, we also used the local interpretable model-agnostic explanations approach, which provides an explanation in the form of relevant features of the predicted results by approximating the model behavior of the variables in a local manner. Compared with existing methods, the DeepFM model obtained the highest AUC value (0.869) and the lowest log loss value (0.256). According to the importance of each feature, three top features for the DeepFM model were postoperative morning adrenocorticotropic hormone level, age, and postoperative morning serum cortisol nadir. In the post hoc explanation phase, the above-mentioned importance-leading features made a great contribution to the prediction probability. The results showed that deep learning-based models could better aid neurosurgeons in recurrence prediction after TTS for patients with CD, and could contribute to determining individual treatment strategies.
机译:Cushing的疾病(CD)是一种罕见的疾病,每年百万人口每年1.2-1.4人发生。经胸腔外科(TSS)后复发预测对于确定个体治疗和后续策略是重要的。在2000年至2017年期间,354名患者术后术后缓解和长期后续数据的患者从北京联盟医院医院(PUMCH)注册,以预测复发,而PUMCH是世界上最大的CD治疗中心之一。我们首先研究了基于分解机(FM)的神经网络的影响,以预测CD的TSS后复发。该方法可以自动减少与可接受的参数的交叉特征选择的一部分。我们进行了收集数据集的各种算法的性能比较。为了解决神经网络模型的缺乏可解释性,我们还使用了本地可解释的模型 - 不可知的解释方法,该方法通过以当地方式近似变量的模型行为来提供预测结果的相关特征形式的说明。与现有方法相比,DeepFM模型获得最高的AUC值(0.869)和最低日志损耗值(0.256)。根据每个特征的重要性,DeepFM模型的三个顶级特征是术后早晨的肾上腺皮质激素水平,年龄和术后早晨血清皮质醇Nadir。在后HOC解释阶段,上述重要性领先的特征对预测概率产生了巨大贡献。结果表明,基于深入的学习模型可以更好地在CD患者的TTS后复发预测中的辅助神经外科,并且可能有助于确定个体治疗策略。

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