Olorunshola, 2023 - Google Patents
Classifying Different Cancer Types Based on Transcriptomics Data Using Machine Learning AlgorithmsOlorunshola, 2023
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- 3620410768455658507
- Author
- Olorunshola E
- Publication year
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Cancer, a complex group of diseases characterized by abnormal cell growth, presents a significant global health challenge. Accurate classification of cancer types is vital for effective treatment and improved patient outcomes. This master's thesis addresses the crucial issue …
- 206010028980 Neoplasm 0 title abstract description 114
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