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1.
PLoS One ; 14(3): e0212562, 2019.
Article in English | MEDLINE | ID: mdl-30865652

ABSTRACT

The fundamental test for male infertility, semen analysis, is mostly a manually performed subjective and time-consuming process and the use of automated systems has been cost prohibitive. We have previously developed an inexpensive smartphone-based system for at-home male infertility screening through automatic and rapid measurement of sperm concentration and motility. Here, we assessed the feasibility of using a similar smartphone-based system for laboratory use in measuring: a) Hyaluronan Binding Assay (HBA) score, a quantitative score describing the sperm maturity and fertilization potential in a semen sample, b) sperm viability, which assesses sperm membrane integrity, and c) sperm DNA fragmentation that assesses the degree of DNA damage. There was good correlation between the manual analysis and smartphone-based analysis for the HBA score when the device was tested with 31 fresh, unprocessed human semen samples. The smartphone-based approach performed with an accuracy of 87% in sperm classification when the HBA score was set at manufacturer's threshold of 80. Similarly, the sperm viability and DNA fragmentation tests were also shown to be compatible with the smartphone-based system when tested with 102 and 47 human semen samples, respectively.


Subject(s)
Cell Survival , DNA Fragmentation , Mobile Applications , Semen Analysis/instrumentation , Smartphone , Sperm Maturation , Adult , Humans , Male
2.
Lab Chip ; 19(1): 59-67, 2018 12 18.
Article in English | MEDLINE | ID: mdl-30534677

ABSTRACT

The ability to accurately predict ovulation at-home using low-cost point-of-care diagnostics can be of significant help for couples who prefer natural family planning. Detecting ovulation-specific hormones in urine samples and monitoring basal body temperature are the current commonly home-based methods used for ovulation detection; however, these methods, relatively, are expensive for prolonged use and the results are difficult to comprehend. Here, we report a smartphone-based point-of-care device for automated ovulation testing using artificial intelligence (AI) by detecting fern patterns in a small volume (<100 µL) of saliva that is air-dried on a microfluidic device. We evaluated the performance of the device using artificial saliva and human saliva samples and observed that the device showed >99% accuracy in effectively predicting ovulation.


Subject(s)
Ovulation Detection/instrumentation , Point-of-Care Testing , Smartphone , Adult , Artificial Intelligence , Equipment Design , Female , Humans , Models, Biological , Ovulation Detection/methods , Saliva/chemistry , Young Adult
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