BioLumin: An Immersive Mixed Reality Experience for Interactive Microscopic Visualization and Biomedical Research Annotation

Aviv Elor, Steve Whittaker, Sri Kurniawan, Sam Michael
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Abstract

Many recent breakthroughs in medical diagnostics and drug discovery arise from deploying machine learning algorithms to large-scale data sets. However, a significant obstacle to such approaches is that they depend on high-quality annotations generated by domain experts. This study develops and evaluates BioLumin, a novel immersive mixed reality environment that enables users to virtually shrink down to the microscopic level for navigation and annotation of 3D reconstructed images. We discuss how domain experts were consulted in the specification of a pipeline to enable automatic reconstruction of biological models for mixed reality environments, driving the design of a 3DUI system to explore whether such a system allows accurate annotation of complex medical data by non-experts. To examine the usability and feasibility of BioLumin, we evaluated our prototype through a multi-stage mixed-method approach. First, three domain experts offered expert reviews, and subsequently, nineteen non-expert users performed representative annotation tasks in a controlled setting. The results indicated that the mixed reality system was learnable and that non-experts could generate high-quality 3D annotations after a short training session. Lastly, we discuss design considerations for future tools like BioLumin in medical and more general scientific contexts.
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BioLumin:一种用于交互式微观可视化和生物医学研究注释的沉浸式混合现实体验
最近在医学诊断和药物发现方面的许多突破都源于将机器学习算法部署到大规模数据集。然而,这种方法的一个重大障碍是,它们依赖于领域专家生成的高质量注释。这项研究开发并评估了BioLumin,这是一种新颖的沉浸式混合现实环境,使用户能够虚拟地缩小到微观水平,用于3D重建图像的导航和注释。我们讨论了在管道规范中如何咨询领域专家,以实现混合现实环境中生物模型的自动重建,从而推动3DUI系统的设计,以探索这种系统是否允许非专家对复杂的医学数据进行准确注释。为了检验BioLumin的可用性和可行性,我们通过多阶段混合方法评估了我们的原型。首先,三位领域专家提供了专家评审,随后,19位非专家用户在受控环境中执行了具有代表性的注释任务。结果表明,混合现实系统是可学习的,非专家可以在短时间的训练后生成高质量的3D注释。最后,我们讨论了在医学和更一般的科学背景下,BioLumin等未来工具的设计考虑因素。
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