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基于连续值逻辑和多准则决策算子的可解释神经网络医疗推荐系统。

Medical recommender systems based on continuous-valued logic and multi-criteria decision operators, using interpretable neural networks.

机构信息

PerMediQ GmbH, Salzbergweg 18, 85368, Wang, Germany.

Faculty of Basic Sciences, University of Applied Sciences, Esslingen, Esslingen, Germany.

出版信息

BMC Med Inform Decis Mak. 2021 Jun 11;21(1):186. doi: 10.1186/s12911-021-01553-3.

Abstract

BACKGROUND

Out of the pressure of Digital Transformation, the major industrial domains are using advanced and efficient digital technologies to implement processes that are applied on a daily basis. Unfortunately, this still does not happen in the same way in the medical domain. For this reason, doctors usually do not have the time or knowledge to evaluate all alternative treatment options for each patient accurately and individually. However, physicians can reduce their workload by using recommender systems, still having every decision under control. In this way, they also get an insight into how other physicians make treatment decisions in each situation. In this work, we report the development of a novel recommender system that uses predicted outcomes based on continuous-valued logic and multi-criteria decision operators. The advantage of this methodology is that it is transparent, since the model outcomes emulate logical decision processes based on the hierarchy of relevant physiological parameters, and second, it is safer against adversarial attacks than conventional deep learning methods since it drastically reduces the number of trainable parameters.

METHODS

We test our methodology in a patient population with diabetes and heart insufficiency that becomes a therapy (beta-blockers, ACE or Aspirin). The original database (Pakistan database) is publicly available and accessible via the internet. However, to explore methods to protect the patient's identity and guarantee data privacy we implemented a methodology on a variable-by-variable basis by fitting a sequence of regression models and drawing synthetic values from the corresponding predictive distributions using linear regressions and norm rank. Furthermore, we implemented a deep-learning model based on logical gates modeled by perceptrons with fixed weights and biases. While a first trainable layer automatically recognizes a meaningful parameter hierarchy, the implemented Logic-Operator Neuronal Network (LONN) simulates cognitive processes like a rational, logical thinking process, considering that this logic is joined by fuzziness, i.e., logical operations are not exact but essentially fuzzy due to the implemented continuous-valued operators. The predicted outcomes of the model (kind of therapy-ACE, Aspirin or beta-blocker- and expected therapy time of the patient) are then implemented in a recommender system that compares two different models: model 1 trained on a population excluding negative outcomes (patient group 1, with no patient dead and long therapy times) and a model 2 trained on the whole patient population (patient group 2). In this way, we provide a recommendation of the best possible therapy based on the outcome of the model and the confidence of this recommendation when the outcome of model 1 is compared with the outcome of model 2.

RESULTS

With the applied method for data synthetization, we obtained an error of about 1% for all the relevant parameters. Furthermore, we demonstrate that the LONN models reach an accuracy of about 75%. After comparing the LONN models against conventional deep-learning models we observe that our implemented models are less accurate (accuracy loss of about 8%). However, the loss of accuracy is compensated by the fact that LONN models are transparent and safe because the freezing of training parameters makes them less prone to adversarial attacks. Finally, we predict the best therapy as well as the expected therapy time. We were able to predict individualized therapies, which were classified as optimal (binary value) when the prediction fully matched predictions made with models 1 and 2. The results provided by the recommender system are displayed using a graphical interface. The current is a proof of concept to improve the quality of the disease management, while the methods are continuously visualized to preserve transparency for the customers.

CONCLUSIONS

This work contributes to simplify administrative functions and boost the quality of management of patients improving the quality of healthcare with models that are both transparent and safe. Our methodology can be extended to different clinical scenarios where recommender systems can be applied. The acceptance and further development of the app is one of the next important steps and still requires further development depending on specific requirements of the health management, the physicians or health professionals, and the patent population.

摘要

背景

在数字化转型的压力下,主要工业领域正在使用先进高效的数字技术来实施日常应用的流程。不幸的是,医疗领域的情况并非如此。出于这个原因,医生通常没有时间或知识来准确和单独地评估每个患者的所有替代治疗方案。然而,医生可以通过使用推荐系统来减轻工作量,仍然可以控制每个决策。通过这种方式,他们还可以了解其他医生在每种情况下如何做出治疗决策。在这项工作中,我们报告了一种使用基于连续值逻辑和多准则决策运算符的预测结果的新型推荐系统的开发。这种方法的优点是它是透明的,因为模型结果基于相关生理参数的层次结构模拟逻辑决策过程,其次,它比传统的深度学习方法更安全,因为它大大减少了可训练参数的数量。

方法

我们在患有糖尿病和心力衰竭的患者人群中测试我们的方法,他们需要接受治疗(β受体阻滞剂、ACE 或阿司匹林)。原始数据库(巴基斯坦数据库)是公开可用的,可以通过互联网访问。然而,为了探索保护患者身份和保证数据隐私的方法,我们实施了一种基于变量的方法,通过拟合一系列回归模型,并使用线性回归和正态秩从相应的预测分布中提取合成值。此外,我们实施了一种基于逻辑门建模的感知器的深度学习模型,感知器的权重和偏差是固定的。虽然第一层是自动识别有意义的参数层次结构的可训练层,但实施的逻辑算子神经网络 (LONN) 模拟了认知过程,例如理性、逻辑思维过程,考虑到这种逻辑是模糊的,即逻辑运算不是精确的,但由于实施了连续值运算符,本质上是模糊的。模型的预测结果(某种治疗方法 - ACE、阿司匹林或β受体阻滞剂 - 和患者的预期治疗时间)然后在推荐系统中实现,该系统比较了两个不同的模型:在排除负面结果的人群(患者组 1,没有患者死亡且治疗时间较长)上训练的模型 1 和在整个患者人群上训练的模型 2。通过这种方式,我们根据模型的结果和将模型 1 的结果与模型 2 的结果进行比较时的推荐置信度,提供了最佳治疗方案的建议。

结果

通过应用数据综合方法,我们获得了所有相关参数的误差约为 1%。此外,我们证明 LONN 模型的准确率约为 75%。在将 LONN 模型与传统的深度学习模型进行比较后,我们观察到我们实施的模型准确性较低(准确率损失约为 8%)。然而,准确性的损失得到了补偿,因为 LONN 模型是透明且安全的,因为训练参数的冻结使它们不易受到对抗攻击。最后,我们预测了最佳治疗方案和预期治疗时间。我们能够预测个体化治疗方案,当预测与模型 1 和 2 的预测完全匹配时,将其分类为最佳治疗方案(二进制值)。推荐系统提供的结果使用图形界面显示。目前这只是一个概念验证,旨在提高疾病管理的质量,同时不断可视化方法以保持客户的透明度。

结论

这项工作有助于简化行政职能,提高患者管理质量,通过透明且安全的模型提高医疗保健质量。我们的方法可以扩展到不同的临床场景,在这些场景中可以应用推荐系统。应用程序的接受和进一步发展是下一个重要步骤之一,仍然需要根据健康管理、医生或医疗保健专业人员以及患者群体的具体要求进一步发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/822f/8194023/bedfe5f6381a/12911_2021_1553_Fig1_HTML.jpg

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