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Context-sensitive autoassociative memories as expert systems in medical diagnosis

机译:上下文相关自动联想记忆作为医学诊断专家系统

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Background The complexity of our contemporary medical practice has impelled the development of different decision-support aids based on artificial intelligence and neural networks. Distributed associative memories are neural network models that fit perfectly well to the vision of cognition emerging from current neurosciences. Methods We present the context-dependent autoassociative memory model. The sets of diseases and symptoms are mapped onto a pair of basis of orthogonal vectors. A matrix memory stores the associations between the signs and symptoms, and their corresponding diseases. A minimal numerical example is presented to show how to instruct the memory and how the system works. In order to provide a quick appreciation of the validity of the model and its potential clinical relevance we implemented an application with real data. A memory was trained with published data of neonates with suspected late-onset sepsis in a neonatal intensive care unit (NICU). A set of personal clinical observations was used as a test set to evaluate the capacity of the model to discriminate between septic and non-septic neonates on the basis of clinical and laboratory findings. Results We show here that matrix memory models with associations modulated by context can perform automatic medical diagnosis. The sequential availability of new information over time makes the system progress in a narrowing process that reduces the range of diagnostic possibilities. At each step the system provides a probabilistic map of the different possible diagnoses to that moment. The system can incorporate the clinical experience, building in that way a representative database of historical data that captures geo-demographical differences between patient populations. The trained model succeeds in diagnosing late-onset sepsis within the test set of infants in the NICU: sensitivity 100%; specificity 80%; percentage of true positives 91%; percentage of true negatives 100%; accuracy (true positives plus true negatives over the totality of patients) 93,3%; and Cohen's kappa index 0,84. Conclusion Context-dependent associative memories can operate as medical expert systems. The model is presented in a simple and tutorial way to encourage straightforward implementations by medical groups. An application with real data, presented as a primary evaluation of the validity and potentiality of the model in medical diagnosis, shows that the model is a highly promising alternative in the development of accuracy diagnostic tools.
机译:背景技术我们当代医学实践的复杂性促使基于人工智能和神经网络的各种决策支持工具的发展。分布式联想记忆是神经网络模型,非常适合当前神经科学新兴的认知视野。方法我们提出了上下文相关的自动联想记忆模型。疾病和症状的集合被映射到一对正交向量的基础上。矩阵存储器存储体征和症状及其相应疾病之间的关联。给出了一个最小的数值示例,以显示如何指示内存以及系统如何工作。为了快速了解模型的有效性及其潜在的临床相关性,我们实施了具有实际数据的应用程序。使用新生儿重症监护病房(NICU)中疑似迟发性败血症的新生儿的公开数据来训练记忆。一组个人临床观察结果用作测试集,以根据临床和实验室检查结果评估模型区分脓毒症和非脓毒症新生儿的能力。结果我们在这里表明,具有由上下文调制的关联的矩阵存储模型可以执行自动医学诊断。随着时间的流逝,新信息的顺序可用性使系统在缩小过程中不断发展,从而缩小了诊断可能性的范围。在每个步骤中,系统都会提供到那一刻的不同可能诊断的概率图。该系统可以结合临床经验,以这种方式建立具有代表性的历史数据数据库,以捕获患者人群之间的人口统计学差异。经过训练的模型可成功诊断出新生儿重症监护病房(NICU)婴儿测试集中的迟发性败血症:敏感性100%;特异性80%;真实肯定的百分比为91%;真实否定百分比100%;准确性(患者总数中的阳性率和阴性率)93.3%;科恩的kappa指数为0.84。结论上下文相关的联想记忆可以作为医学专家系统运行。该模型以一种简单且具有指导性的方式介绍,以鼓励医疗团体直接实施。带有实际数据的应用程序被用作对模型在医学诊断中的有效性和潜力的主要评估,表明该模型是准确性诊断工具开发中极有希望的替代方案。

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