IDENTIFICATION OF PIRNA DISEASE ASSOCIATIONS USING DEEP LEARNING

Identification of piRNA disease associations using deep learning

Identification of piRNA disease associations using deep learning

Blog Article

Piwi-interacting RNAs (piRNAs) play a pivotal role in maintaining genome integrity by repression of transposable elements, sten jacket m gene stability, and association with various disease progressions.Cost-efficient computational methods for the identification of piRNA disease associations promote the efficacy of disease-specific drug development.In this regard, we developed a simple, robust, and efficient deep learning method for identifying the piRNA disease associations known as piRDA.

The proposed architecture extracts the most significant and abstract information from raw sequences represented in a simplicated piRNA disease pair without any involvement of features engineering.Two-step positive unlabeled learning and bootstrapping technique are utilized to abstain from the false-negative and biased predictions dealing with positive unlabeled data.The performance of proposed method piRDA is evaluated using k-fold cross-validation.

The piRDA is significantly improved in all the performance evaluation measures for the identification of piRNA disease associations in comparison to state-of-the-art method.Moreover, it is thus projected conclusively that the proposed computational method here could play a significant role as a supportive and practical tool for primitive disease mechanisms and pharmaceutical research such as in academia and drug design.Eventually, the proposed model can be accessed using publicly available and user-friendly web tool athttp://nsclbio.

jbnu.ac.kr/tools/piRDA/.

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