作者
Alok Sharma, Edwin Vans, Daichi Shigemizu, Keith A Boroevich, Tatsuhiko Tsunoda
发表日期
2019/8/6
期刊
Scientific reports
卷号
9
期号
1
页码范围
11399
出版商
Nature Publishing Group UK
简介
It is critical, but difficult, to catch the small variation in genomic or other kinds of data that differentiates phenotypes or categories. A plethora of data is available, but the information from its genes or elements is spread over arbitrarily, making it challenging to extract relevant details for identification. However, an arrangement of similar genes into clusters makes these differences more accessible and allows for robust identification of hidden mechanisms (e.g. pathways) than dealing with elements individually. Here we propose, DeepInsight, which converts non-image samples into a well-organized image-form. Thereby, the power of convolution neural network (CNN), including GPU utilization, can be realized for non-image samples. Furthermore, DeepInsight enables feature extraction through the application of CNN for non-image samples to seize imperative information and shown promising results. To our knowledge …
引用总数
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