North Carolina State University researchers have developed a handheld device that can be plugged into a smartphone to help farmers identify plant diseases in the field.
“All plants release VOCs (volatile organic compounds) as they ‘breathe,’ but the type and concentration of those VOCs changes when a plant is diseased,” says Qingshan Wei, an assistant professor of chemical and biomolecular engineering and author of a paper on the work. “Each disease has its own signature profile of VOCs. So, by measuring the type and concentration of VOCs being released by the plant, you can determine whether a plant is diseased and – if it is diseased – which disease it has.
“Our contribution here is the creation of a device that can be plugged into a smartphone and used to make those VOC measurements quickly in the field,” says Wei, who is also a faculty member in NC State’s Emerging Plant Disease and Global Food Security cluster.
Current disease identification techniques rely on molecular assays, which take hours to perform and – most importantly – have to be done in a lab. Getting a sample to the lab, where the sample may have to wait to be tested, can delay disease identification by days or weeks.
“Our technology will help farmers identify diseases more quickly, so they can limit the spread of the disease and related crop damage,” says Jean Ristaino, William Neal Reynolds Distinguished Professor of Plant Pathology at NC State, co-author of the paper and director of the cluster. “We are now ready to scale up the technology.”
How The Technology Works
If a farmer suspects a plant may be diseased, he or she can take a leaf from that plant and place it in a test tube. The test tube is then capped for at least 15 minutes to allow the relevant VOCs to accumulate. After the incubation period, the cap is removed and the farmer uses a narrow, plastic tube to pump the VOC-laden air into a “reader” device connected to a smartphone.
“For this technology to work, we had to develop reagents that could be embedded in the paper strips,” says Zheng Li, a postdoctoral researcher at NC State and first author of the paper. “About half of the reagents were off-the-shelf organic dyes, but the other half were gold nanoparticles that we functionalized to respond to specific chemical groups. These functionalized nanoparticles allow us to be more precise in detecting various types of VOCs.”
“We also had to design and build the reader device, since there is nothing like it on the market,” says Wei.
In proof-of-concept testing, the researchers demonstrated the device’s ability to detect and classify 10 plant VOCs down to the parts-per-million level. They were able to detect the late blight pathogen that caused the Irish famine two days after tomato plants were inoculated with the pathogen.
Researchers could also distinguish tomato late blight from two other important fungal pathogens that produce similar symptoms on tomato leaves. In addition, the researchers showed they could detect the pathogen Phytophthora infestans in tomato leaves with greater than 95% accuracy.
“We’ve shown that the technology works,” Wei says. “There are two areas where we could make it even better. First, we would like to automate the pattern analysis using software for the smartphone, which would make it easier for farmers to make disease determinations.
“Second, we envision the development of customized reader strips that are designed to measure the VOCs associated with other diseases specific to a given crop. Different crops in different regions face different threats, and we could develop paper strips that are tailored to address those specific concerns.”
The paper, “Noninvasive Plant Disease Diagnostics Enabled by Smartphone-Based Fingerprinting of Leaf Volatiles,” was published in the journal “Nature Plants.” It was also co-authored by Rajesh Paul and Jeana Hansel, Ph.D. and M.S. students, respectively at NC State; Taleb Ba Tis, a former NC State undergraduate; Amanda Saville, a research assistant in the Ristaino lab at NC State; and Tao Yu, a postdoctoral researcher at NC State.