Computer-aided diagnosis for medical imaging is a well-studied field that aims to provide real-time decision support systems for physicians. These systems attempt to detect and diagnose a plethora of medical conditions across a variety of image diagnostic technologies including ultrasound, x-ray, MRI, and CT. When designing AI models for these systems, we are often limited by little training data, and for rare medical conditions, positive examples are difficult to obtain. These issues often cause models to perform poorly, so we needed a way to design an AI model in light of these limitations. Thus, our approach was to incorporate expert domain knowledge into the design of an AI model. We conducted two qualitative think-aloud studies with doctors trained in the interpretation of lung ultrasound diagnosis to extract relevant domain knowledge for the condition Pneumothorax. We extracted knowledge of key features and procedures used to make a diagnosis. With this knowledge, we employed knowledge engineering concepts to make recommendations for an AI model design to automatically diagnose Pneumothorax.
翻译:医学成像的计算机辅助诊断是一个研究周全的领域,目的是为医生提供实时决策支持系统。这些系统试图检测和诊断各种图像诊断技术,包括超声波、X光、MRI和CT等多种医疗条件。在为这些系统设计AI模型时,我们往往受到很少的培训数据的限制,对于罕见的医疗条件,很难获得积极的例子。这些问题往往导致模型运行不良,因此我们需要一种方法,根据这些局限性设计AI模型。因此,我们的方法是将专家领域知识纳入AI模型的设计中。我们与受过肺超声波诊断解释培训的医生进行了两次定性智囊研究,以获取有关肺部细胞病症的相关领域知识。我们利用这些知识获取了用于诊断的关键特征和程序的知识。我们利用这些知识,运用了知识工程概念,为用于自动诊断肺部细胞的AI模型设计提出建议。