An Optical Smartphone-Based Inspection Platform for Identification of Diseased Orchids

Biosensors (Basel). 2021 Sep 30;11(10):363. doi: 10.3390/bios11100363.

Abstract

Infections of orchids by the Odontoglossum ringspot virus or Cymbidium mosaic virus cause orchid disfiguration and are a substantial source of economic loss for orchid farms. Although immunoassays can identify these infections, immunoassays are expensive, time consuming, and labor consuming and limited to sampling-based testing methods. This study proposes a noncontact inspection platform that uses a spectrometer and Android smartphone. When orchid leaves are illuminated with a handheld optical probe, the Android app based on the Internet of Things and artificial intelligence can display the measured florescence spectrum and determine the infection status within 3 s by using an algorithm hosted on a remote server. The algorithm was trained on optical data and the results of polymerase chain reaction assays. The testing accuracy of the algorithm was 89%. The area under the receiver operating characteristic curve was 91%; thus, the platform with the algorithm was accurate and convenient for infection screening in orchids.

Keywords: Internet of Things; artificial intelligence; diseased orchids; optical inspection.

MeSH terms

  • Artificial Intelligence
  • Orchidaceae*
  • Plant Diseases / virology
  • Polymerase Chain Reaction
  • Potexvirus
  • Smartphone*
  • Tobamovirus

Supplementary concepts

  • Cymbidium mosaic virus

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