Abstract

Quantitative imaging has become a vital technique in biological discovery and clinical diagnostics; a plethora of tools have recently been developed to enable new and accelerated forms of biological investigation. Increasingly, the capacity for high-throughput experimentation provided by new imaging modalities, contrast techniques, microscopy tools, microfluidics and computer controlled systems shifts the experimental bottleneck from the level of physical manipulation and raw data collection to automated recognition and data processing. Yet, despite their broad importance, image analysis solutions to address these needs have been narrowly tailored. Here, we present a generalizable formulation for autonomous identification of specific biological structures that is applicable for many problems. The process flow architecture we present here utilizes standard image processing techniques and the multi-tiered application of classification models such as support vector machines (SVM). These low-level functions are readily available in a large array of image processing software packages and programming languages. Our framework is thus both easy to implement at the modular level and provides specific high-level architecture to guide the solution of more complicated image-processing problems. We demonstrate the utility of the classification routine by developing two specific classifiers as a toolset for automation and cell identification in the model organism Caenorhabditis elegans. To serve a common need for automated high-resolution imaging and behavior applications in the C. elegans research community, we contribute a ready-to-use classifier for the identification of the head of the animal under bright field imaging. Furthermore, we extend our framework to address the pervasive problem of cell-specific identification under fluorescent imaging, which is critical for biological investigation in multicellular organisms or tissues. Using these examples as a guide, we envision the broad utility of the framework for diverse problems across different length scales and imaging methods.

Highlights

  • Diverse imaging techniques exist to provide functional and structural information about biological specimens in clinical and experimental settings

  • We demonstrate the power of this approach for solving disparate biological image processing problems by developing two widely relevant toolsets for the multicellular model organism, Caenorhabditis elegans

  • We apply a two-layer classification scheme to identify whether the candidates generated are features of interest

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Summary

Introduction

Diverse imaging techniques exist to provide functional and structural information about biological specimens in clinical and experimental settings. New and augmented imaging modalities and contrast techniques have increased the types of information that can be garnered from biological samples [1]. Many tools have recently been developed to enable new and accelerated forms of biological experimentation in both single cells and multicellular model organisms [2,3,4,5,6,7,8,9,10]. The capacity for high-throughput experimentation provided by new optical tools, microfluidics and computer controlled systems has eased the experimental bottleneck at the level of physical manipulation and raw data collection. Even when off-line data analysis is sufficient, the capability of these systems to generate large, high-content datasets places a large burden on the speed of the downstream analysis

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