Klasifikasi Penyakit Kulit Menggunakan Model Deep Learning EfficientNet pada Citra Dermastokopi
Abstrak
Penyakit kulit merupakan salah satu masalah
kesehatan yang umum terjadi dan dapat berkembang menjadi
kondisi serius seperti melanoma, salah satu jenis kanker kulit
yang berbahaya. Proses diagnosis manual sering kali memakan
waktu, bergantung pada keahlian subjektif, serta berpotensi
menghasilkan hasil yang tidak konsisten. Penelitian ini
bertujuan mengembangkan model klasifikasi penyakit kulit
berbasis Convolutional Neural Network (CNN) dengan
arsitektur EfficientNet pada citra dermatoskopi. Dataset yang
digunakan adalah HAM10000, yang berisi 10.015 citra
dermatoskopi dari tujuh kategori lesi kulit. Tahapan penelitian
meliputi preprocessing data, augmentasi untuk
menyeimbangkan kelas, serta pelatihan model dengan
pendekatan dua tahap, yaitu feature extraction dan fine-tuning.
Tiga varian model diuji, yaitu EfficientNetB0,
EfficientNetV2B0, dan EfficientNetV2B3. Hasil pengujian
menunjukkan bahwa EfficientNetV2B3 memberikan performa
terbaik dengan akurasi 90,53% dan F1-score 85,56%,
mengungguli dua model lainnya. Temuan ini menunjukkan
bahwa arsitektur EfficientNetV2B3 memiliki potensi besar
dalam mendukung sistem diagnosis berbasis citra dermatoskopi
secara lebih akurat dan efisien.
Kata kunci — CNN, EfficientNet, dermatoskopi,
HAM10000, klasifikasi penyakit kulit, akurasi
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