论文标题

Daisi:AI手术指导的数据库

DAISI: Database for AI Surgical Instruction

论文作者

Rojas-Muñoz, Edgar, Couperus, Kyle, Wachs, Juan

论文摘要

在没有原位专业知识的情况下,远程医生进行手术对于患者的治疗至关重要。但是,专家导师通常无法为受训者提供实时医疗指导。当导师不可用时,后备自治机制应为医生提供所需的指导。但是,医学领域的AI/自主指导受到可用预测模型的可用性以及与这些模型一起培训这些模型的手术程序的可用性的限制。这项工作介绍了开发智能人工系统的最初步骤,用于自主医学指导。具体来说,我们介绍了AI手术指导(DAISI)的第一个数据库。 Daisi利用图像和说明来逐步提供有关如何从各种医学学科中执行程序的演示。该数据集是从真正的外科手术程序和学术教科书数据中获取的。我们使用DAISI训练一个编码器神经网络,能够预测手术的视野。之后,使用专家医生的累积BLEU分数和输入来评估网络预测的指示。根据BLEU分数,预测和地面真相指示高达67%。此外,专家医师使用李克特量表主观评估了算法,并认为预测的描述与图像有关。这项工作为AI算法提供了协助自动医学指导的基线。

Telementoring surgeons as they perform surgery can be essential in the treatment of patients when in situ expertise is not available. Nonetheless, expert mentors are often unavailable to provide trainees with real-time medical guidance. When mentors are unavailable, a fallback autonomous mechanism should provide medical practitioners with the required guidance. However, AI/autonomous mentoring in medicine has been limited by the availability of generalizable prediction models, and surgical procedures datasets to train those models with. This work presents the initial steps towards the development of an intelligent artificial system for autonomous medical mentoring. Specifically, we present the first Database for AI Surgical Instruction (DAISI). DAISI leverages on images and instructions to provide step-by-step demonstrations of how to perform procedures from various medical disciplines. The dataset was acquired from real surgical procedures and data from academic textbooks. We used DAISI to train an encoder-decoder neural network capable of predicting medical instructions given a current view of the surgery. Afterwards, the instructions predicted by the network were evaluated using cumulative BLEU scores and input from expert physicians. According to the BLEU scores, the predicted and ground truth instructions were as high as 67% similar. Additionally, expert physicians subjectively assessed the algorithm using Likert scale, and considered that the predicted descriptions were related to the images. This work provides a baseline for AI algorithms to assist in autonomous medical mentoring.

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