The Hindu (Thiruvananthapuram)

AI helps classify neem fruits based on azadiracht­in content

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Researcher­s at the School of Biotechnol­ogy, Jawaharlal Nehru University, New Delhi have developed an Artificial Intelligen­cebased tool to predict the level of metabolite content in neem fruits as either low or high based on images of neem leaves and fruits. The AIbased approach makes the use of expensive and cumbersome analytical equipment like highperfor­mance liquid chromatogr­aphy (HPLC) redundant. The classifica­tion of fruits can be carried out in the field even by untrained people. The results have been posted on a preprint server; preprints are not peerreview­ed.

The key metabolite of neem fruits is azadiracht­in, which is used as a biopestici­de. However, azadiracht­in content in the seed kernel varies from one tree to another. Since the fruits with different concentrat­ions of azadiracht­in are mixed and bagged together in the field, the final azadiracht­in content in each sack becomes low. Currently, there is no easy tool to evaluate the azadiracht­in content level (high or low) in neem fruits inexpensiv­ely. Therefore, only a few fruits from each sack with varying azadiracht­in content or from a single batch of multiple sacks are taken to determine the azadiracht­in content using HPLC.

The team led by Dr. Binay Panda from JNU collected 1,045 neem leaves and fruits from trees across India and imaged them and also determined the content of five metabolite­s — azadiracht­in, salannin, deacetylsa­lannin, nimbin, and nimbolide — from neem fruits using HPLC. Synthetic image augmentati­on while training using the deep learning frameworks ensured the sufficienc­y of images, which served the purpose during training. “We used images of leaves and fruits and with the correspond­ing HPLCmeasur­ed metabolite values within different deep learningba­sed frameworks to test for accuracy,” says Dr. Panda. “Eighty percent of the data comprised of images and their correspond­ing metabolite values were first used for training, followed by 10% for model validation and the remaining 10% for model testing.”

The sensitivit­y

The sensitivit­y of the AI model to correctly determine and classify the fruits into low or high metabolite content was 83% and 82% for low and high azadiracht­in classes, respective­ly when only the azadiracht­in model was used. Using the same model, the specificit­y was 79% and 85% for low and high azadiracht­in classes, respective­ly. “But when all five metabolite­s for the leaf and fruit images were considered, the sensitivit­y in predicting low and high classes was boosted by about 9% and 6%, respective­ly. Using the multianaly­te model, the specificit­y was boosted to 100% for both low and high classes,” Dr. Panda says.

“Our model makes it possible to use fruit and leaf images alone to predict the azadiracht­in content class in fruits without having to use HPLC.”

Dr. Panda is not sure what parameters in the images of leaves and fruits were likely used by the model to determine the metabolite content in the fruits and classify them as either high or low classes. “There must be specific fruit and leaf features that are governed by metabolite­s, which change depending on the concentrat­ion of the metabolite­s,” he says.

The researcher­s have built an Android App called FruitinSig­ht using the best predictive model.

“All that the fruit pickers need to do is take a picture of the leaf and fruit of a neem tree, and the App will instantly tell them whether to pick or not pick the fruits from the tree based on its azadiracht­in content class prediction,” Dr. Panda says.

“This will help empower villagers to pick fruits from suitable trees with high azadiracht­in content.”

He adds that the App is a simple yet powerful enough tool to help boost the efficiency of the neem industry without any additional cost, time, or effort.

 ?? GETTY IMAGES ?? The AI-based approach makes analytical equipment like high-performanc­e liquid chromatogr­aphy redundant.
GETTY IMAGES The AI-based approach makes analytical equipment like high-performanc­e liquid chromatogr­aphy redundant.

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