Self-supervised segmentation and characterization of fiber bundles in anatomic tracing data.

Vaanathi Sundaresan, Julia F Lehman, Chiara Maffei, Suzanne N Haber, Anastasia Yendiki
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Abstract

Anatomic tracing is the gold standard tool for delineating brain connections and for validating more recently developed imaging approaches such as diffusion MRI tractography. A key step in the analysis of data from tracer experiments is the careful, manual charting of fiber trajectories on histological sections. This is a very time-consuming process, which limits the amount of annotated tracer data that are available for validation studies. Thus, there is a need to accelerate this process by developing a method for computer-assisted segmentation. Such a method must be robust to the common artifacts in tracer data, including variations in the intensity of stained axons and background, as well as spatial distortions introduced by sectioning and mounting the tissue. The method should also achieve satisfactory performance using limited manually charted data for training. Here we propose the first deep-learning method, with a self-supervised loss function, for segmentation of fiber bundles on histological sections from macaque brains that have received tracer injections. We address the limited availability of manual labels with a semi-supervised training technique that takes advantage of unlabeled data to improve performance. We also introduce anatomic and across-section continuity constraints to improve accuracy. We show that our method can be trained on manually charted sections from a single case and segment unseen sections from different cases, with a true positive rate of ~0.80. We further demonstrate the utility of our method by quantifying the density of fiber bundles as they travel through different white-matter pathways. We show that fiber bundles originating in the same injection site have different levels of density when they travel through different pathways, a finding that can have implications for microstructure-informed tractography methods. The code for our method is available at https://github.com/v-sundaresan/fiberbundle_seg_tracing.

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解剖追踪数据中纤维束的自监督分割和表征。
解剖追踪是描绘大脑连接和验证最近开发的成像方法(如扩散MRI牵引成像)的金标准工具。示踪剂实验数据分析的一个关键步骤是在组织学切片上仔细手动绘制纤维轨迹。这是一个非常耗时的过程,限制了可用于验证研究的注释示踪剂数据的数量。因此,需要通过开发一种用于计算机辅助分割的方法来加速这一过程。这种方法必须对示踪剂数据中的常见伪影具有鲁棒性,包括染色轴突和背景强度的变化,以及通过切片和安装组织引入的空间失真。该方法还应使用有限的手动图表数据进行训练,以达到令人满意的性能。在这里,我们提出了第一种具有自我监督损失函数的深度学习方法,用于分割接受示踪剂注射的猕猴大脑组织切片上的纤维束。我们通过半监督训练技术解决了手动标签的有限可用性问题,该技术利用未标记的数据来提高性能。我们还引入了解剖学和跨截面连续性约束,以提高准确性。我们表明,我们的方法可以在单个病例的手动绘制截面和不同病例的分段未显示截面上进行训练,真实阳性率为~0.80。我们通过量化纤维束通过不同白质途径时的密度,进一步证明了我们方法的实用性。我们发现,来源于同一注射部位的纤维束在通过不同途径时具有不同的密度水平,这一发现可能对微观结构知情的纤维束成像方法产生影响。我们方法的代码可在https://github.com/v-sundaresan/fiberbundle_seg_tracing。
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