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Open AccessJournal ArticleDOI

Automated Micro-Object Detection for Mobile Diagnostics Using Lens-Free Imaging Technology.

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TLDR
A custom-developed automated micro-object detection method based on adaptive threshold and clustering of signals for a lens-free imaging system that possesses great potential for telemedicine applications in resource-limited settings.
Abstract
Lens-free imaging technology has been extensively used recently for microparticle and biological cell analysis because of its high throughput, low cost, and simple and compact arrangement. However, this technology still lacks a dedicated and automated detection system. In this paper, we describe a custom-developed automated micro-object detection method for a lens-free imaging system. In our previous work (Roy et al.), we developed a lens-free imaging system using low-cost components. This system was used to generate and capture the diffraction patterns of micro-objects and a global threshold was used to locate the diffraction patterns. In this work we used the same setup to develop an improved automated detection and analysis algorithm based on adaptive threshold and clustering of signals. For this purpose images from the lens-free system were then used to understand the features and characteristics of the diffraction patterns of several types of samples. On the basis of this information, we custom-developed an automated algorithm for the lens-free imaging system. Next, all the lens-free images were processed using this custom-developed automated algorithm. The performance of this approach was evaluated by comparing the counting results with standard optical microscope results. We evaluated the counting results for polystyrene microbeads, red blood cells, and HepG2, HeLa, and MCF7 cells. The comparison shows good agreement between the systems, with a correlation coefficient of 0.91 and linearity slope of 0.877. We also evaluated the automated size profiles of the microparticle samples. This Wi-Fi-enabled lens-free imaging system, along with the dedicated software, possesses great potential for telemedicine applications in resource-limited settings.

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Citations
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Journal ArticleDOI

Colony fingerprint for discrimination of microbial species based on lensless imaging of microcolonies.

TL;DR: A novel method that detects microcolonies (diameter 10–500 μm) using a lensless imaging system and holds promise for microbial detection and identification in various academic and industrial areas.
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Monitoring Neutropenia for Cancer Patients at the Point of Care

TL;DR: A reliable method is presented that selectively captures and quantifies white blood cells (WBCs) and neutrophils from a finger prick volume of whole blood by integrating microfluidics with high-resolution imaging algorithms.
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Machine Learning Based Lens-Free Shadow Imaging Technique for Field-Portable Cytometry

TL;DR: The artificial intelligence-powered auto signal enhancing scheme such as denoising autoencoder and adaptive cell characterization technique based on the transfer of learning in deep neural networks is leveraged and shows an increase in accuracy along with the signal enhancement for most of the cell types.
Journal ArticleDOI

Rapid eco-toxicity analysis of hazardous and noxious substances (HNS) using morphological change detection in Dunaliella tertiolecta

TL;DR: In this article, a field-portable cell analyzer, NaviCell, which integrates lens-free shadow imaging technology (LSIT) was developed to automatically analyze the morphological changes of hundreds of microalgae within just 3-4min with over 96% precision and accuracy.
Journal ArticleDOI

Field-portable seawater toxicity monitoring platform using lens-free shadow imaging technology.

TL;DR: In this paper , a rapid and automated method was proposed to evaluate seawater ecotoxicity by quantification of the morphological changes of microalgae exposed to more than 30 HNSs.
References
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Journal ArticleDOI

Imaging without lenses: achievements and remaining challenges of wide-field on-chip microscopy

TL;DR: Unique features of lens-free computational imaging tools are discussed and some of their emerging results for wide-field on-chip microscopy, such as the achievement of a numerical aperture of ∼0.8–0.9 across a field of view (FOV) of more than 20 mm2, which corresponds to an image with more than 1.5 gigapixels.
Journal ArticleDOI

Lensfree on-chip microscopy over a wide field-of-view using pixel super-resolution

TL;DR: A sub-pixel shifting based super-resolution algorithm is implemented to effectively recover much higher resolution digital holograms of the objects, permitting sub-micron spatial resolution to be achieved across the entire sensor chip active area.
Journal ArticleDOI

Lensfree holographic imaging for on-chip cytometry and diagnostics.

TL;DR: In this article, a 2D holographic diffraction pattern of each cell or micro-particle on a chip using a high resolution sensor array that has ∼2 µm pixel size is recorded.
Journal ArticleDOI

Optical imaging techniques for point-of-care diagnostics

TL;DR: A review of state-of-the-art optical imaging techniques that can have a significant impact on global health by facilitating effective and affordable POC diagnostics is presented in this article.
Journal ArticleDOI

Ultra wide-field lens-free monitoring of cells on-chip.

TL;DR: The proof-of-principle is demonstrated of a new lens-free cell monitoring platform that involves using an opto-electronic sensor array to record the shadow image of cells onto the sensor plane that does not require any mechanical scanning or optical elements, such as microscope objectives or lenses.
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