研究目的
To develop a cost-effective, portable, and rapid screening platform for detecting motile parasites in bodily fluids using holographic speckle analysis and deep learning, aiming to improve early diagnosis of parasitic infections in resource-limited settings.
研究成果
The presented motility-based label-free computational imaging platform demonstrates sensitive and rapid detection of motile parasites in bodily fluids, with a limit of detection superior to current parasitological methods. Its cost-effective, portable design makes it suitable for resource-limited settings, offering potential for early diagnosis and treatment of parasitic infections.
研究不足
The current platform does not automatically differentiate between different parasite species. The recovery rate decreases at higher parasite concentrations due to proximity effects. The technique is limited to motile parasites and may not detect non-motile or slow-moving parasites.
1:Experimental Design and Method Selection:
The platform utilizes lensless time-resolved holographic speckle imaging to detect motile parasites by their locomotion patterns. A computational motion analysis (CMA) algorithm combined with deep learning-based classification is employed for sensitive and label-free detection.
2:Sample Selection and Data Sources:
Trypanosome-spiked whole blood and artificial cerebrospinal fluid (CSF) samples were used to validate the platform. Trichomonas vaginalis in phosphate-buffered saline (PBS) and culture medium was also tested.
3:List of Experimental Equipment and Materials:
A prototype device with three lensless holographic speckle imagers, laser diodes, CMOS image sensors, and a linear translation stage was built. Samples were prepared using lysis buffer, artificial CSF, and cultured parasites.
4:Experimental Procedures and Operational Workflow:
Samples were loaded into capillary tubes, illuminated by laser diodes, and imaged by CMOS sensors. The device scans the sample in three dimensions, and the acquired images are processed by the CMA algorithm and deep learning classifier.
5:Data Analysis Methods:
The CMA algorithm involves holographic back-propagation, differential imaging, and temporal averaging. A convolutional neural network (CNN) classifies the signals to identify parasites.
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Laser diode
AML-N056-650001-01
Arima Lasers Corp.
Illumination source for the lensless imager
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CMOS image sensor
acA3800-14um
Basler
Captures diffraction patterns of the sample
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Stepper motor
324
Adafruit Industries LLC.
Drives the linear translation stage
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Linear motion shaft
85421
Makeblock Co., Ltd.
Part of the linear translation stage
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Linear motion slider
86050
Makeblock Co., Ltd.
Part of the linear translation stage
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Timing belt
B375-210XL
ServoCity
Part of the linear translation stage
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Timing pulley
615418
ServoCity
Part of the linear translation stage
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Microcontroller
Teensy LC
PJRC
Automates the device
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Constant current circuit
LM317DCYR
Texas Instruments
Drives the laser diodes
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Stepper motor driver circuit
TB6612
Adafruit
Controls the stepper motor
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3D printer
Objet30 Pro
Stratasys
Used to print parts of the device
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