Research Center for Agricultural Information Technology, National Agriculture and Food Research Organization, Tsukuba, Japan.
Institute of Plant Protection, National Agriculture and Food Research Organization, Tsukuba, Japan.
Mol Plant Pathol. 2024 Jul;25(7):e13469. doi: 10.1111/mpp.13469.
Viroids, one of the smallest known infectious agents, induce symptoms of varying severity, ranging from latent to severe, based on the combination of viroid isolates and host plant species. Because viroids are transmissible between plant species, asymptomatic viroid-infected plants may serve as latent sources of infection for other species that could exhibit severe symptoms, occasionally leading to agricultural and economic losses. Therefore, predicting the symptoms induced by viroids in host plants without biological experiments could remarkably enhance control measures against viroid damage. Here, we developed an algorithm using unsupervised machine learning to predict the severity of disease symptoms caused by viroids (e.g., potato spindle tuber viroid; PSTVd) in host plants (e.g., tomato). This algorithm, mimicking the RNA silencing mechanism thought to be linked to viroid pathogenicity, requires only the genome sequences of the viroids and host plants. It involves three steps: alignment of synthetic short sequences of the viroids to the host plant genome, calculation of the alignment coverage, and clustering of the viroids based on coverage using UMAP and DBSCAN. Validation through inoculation experiments confirmed the effectiveness of the algorithm in predicting the severity of disease symptoms induced by viroids. As the algorithm only requires the genome sequence data, it may be applied to any viroid and plant combination. These findings underscore a correlation between viroid pathogenicity and the genome sequences of viroid isolates and host plants, potentially aiding in the prevention of viroid outbreaks and the breeding of viroid-resistant crops.
类病毒是已知的最小传染性病原体之一,根据类病毒分离株和宿主植物种类的组合,引起不同严重程度的症状,从潜伏到严重不等。由于类病毒可在植物物种之间传播,无症状的类病毒感染植物可能成为其他可能表现出严重症状的物种的潜在感染源,偶尔会导致农业和经济损失。因此,在没有生物实验的情况下预测宿主植物中类病毒引起的症状,可以显著增强针对类病毒损害的控制措施。在这里,我们开发了一种使用无监督机器学习的算法来预测宿主植物(例如番茄)中类病毒(例如马铃薯纺锤块茎类病毒;PSTVd)引起的疾病严重程度。该算法模拟了与类病毒致病性相关的 RNA 沉默机制,仅需要类病毒和宿主植物的基因组序列。它涉及三个步骤:将类病毒的合成短序列与宿主植物基因组对齐、计算对齐覆盖率以及使用 UMAP 和 DBSCAN 根据覆盖率对类病毒进行聚类。通过接种实验验证表明,该算法在预测类病毒引起的疾病严重程度方面是有效的。由于该算法仅需要基因组序列数据,因此它可以应用于任何类病毒和植物组合。这些发现强调了类病毒致病性与类病毒分离株和宿主植物基因组序列之间的相关性,这可能有助于预防类病毒爆发和培育类病毒抗性作物。