Nuklianggraita et al., 2020 - Google Patents
On the Feature Selection of Microarray Data for Cancer Detection based on Random Forest ClassifierNuklianggraita et al., 2020
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- 16889357438408441477
- Author
- Nuklianggraita T
- Adiwijaya A
- Aditsania A
- Publication year
- Publication venue
- Jurnal Infotel
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Snippet
Cancer is a disease that can affect all organs of humans. Based on data from the World Health Organization (WHO) fact sheet in 2018, cancer deaths have reached 9.6 million. One known way to detect cancer that is with Microarray Technique, but the microarray data have …
- 201000011510 cancer 0 title abstract description 109
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