Addressing bias in manual segmentation of spheroid sprouting assays with U-Net.

IF 1.8 3区 医学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Vision Pub Date : 2023-10-20 eCollection Date: 2023-01-01
Julian Rapp, Daniel Böhringer, Günther Schlunck, Hansjürgen Agostini, Thomas Reinhard, Felicitas Bucher
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引用次数: 0

Abstract

Purpose: Angiogenesis research faces the issue of false-positive findings due to the manual analysis pipelines involved in many assays. For example, the spheroid sprouting assay, one of the most prominent in vitro angiogenesis models, is commonly based on manual segmentation of sprouts. In this study, we propose a method for mitigating subconscious or fraudulent bias caused by manual segmentation. This approach involves training a U-Net model on manual segmentations and using the readout of this U-Net model instead of the potentially biased original segmentations. Our hypothesis is that U-Net will mitigate any bias in the manual segmentations because this will impose only random noise during model training. We assessed this idea using a simulation study.

Methods: The training data comprised 1531 phase contrast images and manual segmentations from various spheroid sprouting assays. We randomly divided the images 1:1 into two groups: a fictitious intervention group and a control group. Bias was simulated exclusively in the intervention group. We simulated two adversarial scenarios: 1) removal of a single randomly selected sprout and 2) systematic shortening of all sprouts. For both scenarios, we compared the original segmentation, adversarial segmentation, and respective U-Net readouts. In the second step, we assessed the sensitivity of this approach to detect a true positive effect. We sampled multiple treatment and control groups with decreasing treatment effects based on unbiased ground truth segmentation.

Results: This approach was able to mitigate bias in both adversarial scenarios. However, in both scenarios, U-Net detected the real treatment effects based on a comparison to the ground truth.

Conclusions: This method may prove useful for verifying positive findings in angiogenesis experiments with a manual analysis pipeline when full investigator masking has been neglected or is not feasible.

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利用 U-Net 解决球粒萌发试验人工分割的偏差。
目的:血管生成研究面临着假阳性发现的问题,这是因为许多检测方法都需要人工分析。例如,球状萌发试验是最重要的体外血管生成模型之一,该试验通常基于人工分割萌发的球状萌发。在本研究中,我们提出了一种方法来减少人工分割造成的下意识或欺诈性偏差。这种方法包括在人工分割的基础上训练一个 U-Net 模型,并使用该 U-Net 模型的读出结果来代替可能存在偏差的原始分割结果。我们的假设是,U-Net 将减轻人工分割中的任何偏差,因为这只会在模型训练过程中产生随机噪声。我们通过模拟研究对这一想法进行了评估:训练数据包括 1531 张相衬图像和来自各种球状萌发试验的手动分割。我们以 1:1 的比例将图像随机分为两组:虚构的干预组和对照组。干预组只模拟偏差。我们模拟了两种不利情况:1) 删除随机选择的一个新芽;2) 系统性缩短所有新芽。在这两种情况下,我们比较了原始分割、对抗性分割和各自的 U-Net 读数。第二步,我们评估了这种方法检测真实阳性效应的灵敏度。我们对多个治疗组和对照组进行了采样,并根据无偏见的地面实况分割结果对治疗效果进行了递减:结果:这种方法能够在两种对抗情景中减轻偏差。然而,在这两种情况下,U-Net 都能根据与地面实况的比较检测出真正的治疗效果:结论:这种方法可能会被证明是有用的,当研究者的全面遮蔽被忽视或不可行时,这种方法可以通过手动分析管道验证血管生成实验中的积极发现。
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来源期刊
Molecular Vision
Molecular Vision 生物-生化与分子生物学
CiteScore
4.40
自引率
0.00%
发文量
25
审稿时长
1 months
期刊介绍: Molecular Vision is a peer-reviewed journal dedicated to the dissemination of research results in molecular biology, cell biology, and the genetics of the visual system (ocular and cortical). Molecular Vision publishes articles presenting original research that has not previously been published and comprehensive articles reviewing the current status of a particular field or topic. Submissions to Molecular Vision are subjected to rigorous peer review. Molecular Vision does NOT publish preprints. For authors, Molecular Vision provides a rapid means of communicating important results. Access to Molecular Vision is free and unrestricted, allowing the widest possible audience for your article. Digital publishing allows you to use color images freely (and without fees). Additionally, you may publish animations, sounds, or other supplementary information that clarifies or supports your article. Each of the authors of an article may also list an electronic mail address (which will be updated upon request) to give interested readers easy access to authors.
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