GDSC VERİLERİNİ KULLANARAK YAPAY ÖĞRENME YÖNTEMLERİ İLE AKCİĞER KANSERİ İÇİN HEDEF İLAÇ VE YOLAK TAHMİNİ
Öz
Anahtar Kelimeler
Yapay öğrenme, GDSC2 veri kümesi, Hedef ilaç tahmini, Hedef yolak tahmini, CTDBase veri kümesi, Machine learning, GDSC2 dataset, Lung adenocarcinoma, Drug-target prediction, Target pathway prediction CTDBase dataset
Kaynakça
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