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Explainable AI for COVID-19 CT Classifiers: An Initial Comparison Study

机译:可解释Covid-19 CT分类器的AI:初始比较研究

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Artificial Intelligence (AI) has made leapfrogs in development across all the industrial sectors especially when deep learning has been introduced. Deep learning helps to learn the behaviour of an entity through methods of recognising and interpreting patterns. Despite its limitless potential, the mystery is how deep learning algorithms make a decision in the first place. Explainable AI (XAI) is the key to unlocking AI and the black-box for deep learning. XAI is an AI model that is programmed to explain its goals, logic, and decision making so that the end users can understand. The end users can be domain experts, regulatory agencies, managers and executive board members, data scientists, users that use AI, with or without awareness, or someone who is affected by the decisions of an AI model. Chest CT has emerged as a valuable tool for the clinical diagnostic and treatment management of the lung diseases associated with COVID-19. AI can support rapid evaluation of CT scans to differentiate COVID-19 findings from other lung diseases. However, how these AI tools or deep learning algorithms reach such a decision and which are the most influential features derived from these neural networks with typically deep layers are not clear. The aim of this study is to propose and develop XAI strategies for COVID-19 classification models with an investigation of comparison. The results demonstrate promising quantification and qualitative visualisations that can further enhance the clinician's understanding and decision making with more granular information from the results given by the learned XAI models.
机译:人工智能(AI)在所有工业部门的发展中都在开发的跨越子,特别是当介绍深度学习时。深入学习有助于通过识别和解释模式的方法来学习实体的行为。尽管有无限的潜力,但神秘的是深度学习算法是如何首先做出决定的。可解释的ai(xai)是解锁ai和黑盒的关键,用于深入学习。 XAI是一个用于解释其目标,逻辑和决策的AI模型,以便最终用户可以理解。最终用户可以成为领域专家,监管机构,经理和执行委员会成员,数据科学家,使用AI的用户,有或没有意识,或受到AI模型决定影响的人。胸部CT已成为与Covid-19相关的肺部疾病的临床诊断和治疗管理的宝贵工具。 AI可以支持CT扫描的快速评估,以区分其他肺病的Covid-19结果。然而,这些AI工具或深度学习算法如何达到这样的决定,并且是从这些神经网络导出的最有影响力的功能,通常是深层的。本研究的目的是提出并开发Covid-19分类模型的Xai战略,并调查比较。结果表明,有希望的量化和定性等待,可以进一步提高临床医生的理解和决策,从学习XAI模型给出的结果中的更多粒度信息。

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