Design and development of skin disease detection application in humans using computer vision
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Abstract
Skin diseases are abnormal conditions affecting the outer layer of the human body. The prevalence of skin infections worldwide reaches 300 million cases per year, with Indonesia contributing significantly, mainly due to the tropical climate and dense population. Factors such as air temperature, environmental cleanliness, personal hygiene, and the lack of public knowledge about skin hygiene can trigger various types of skin diseases. Skin diseases are often considered trivial as they do not cause death, yet if not promptly and accurately addressed, they can lead to spreading and difficulties in treatment. Analyzing skin diseases requires a high level of knowledge, and accurate diagnosis often presents a challenge. The success of diagnosis heavily relies on the experience of doctors, with some limitations involving subjective assessments and variations among experts. This research aims to design an artificial intelligence (AI)-based application that can quickly and accurately diagnose various types of skin diseases in humans. The application utilizes Deep Learning technology, employing the MobileNet model in Computer Vision to identify skin disease types based on images provided by the user. The system development method used is the AI Project Cycle, encompassing stages such as problem scoping, data acquisition, data exploration, modeling, evaluation, and deployment. Model evaluation results demonstrate good performance with an accuracy rate of 96%, precision of 96%, an f1 score of 95%, and a recall of 95%. The resulting application not only provides diagnoses but also offers information about symptoms, causes, and methods of handling the identified skin diseases
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Azmi, K., Defit, S., & Sumijan, S. (2023). Implementasi Convolutional Neural Network (CNN) Untuk Klasifikasi Batik Tanah Liat Sumatera Barat. Jurnal Unitek, 16(1), 28–40. https://doi.org/10.52072/unitek.v16i1.504
Desnanjaya, I. G. M. N., Hartawan, I. N. B., Supartha, I. K. D. G., & Kombonglangi, K. C. (2022). Implementasi Computer Vision Pada Mesin Filling Cupcake Menggunakan Raspberry Pi. JST (Jurnal Sains Dan Teknologi), 11(1), 150–156. https://doi.org/10.23887/jstundiksha.v11i1.39048
Dompeipen, T. A., & Sompie, S. R. U. . (2020). Penerapan computer vision untuk pendeteksian dan penghitung jumlah manusia. Jurnal Teknik Informatika, 15(4), 1–12. https://ejournal.unsrat.ac.id/index.php/informatika
Feriawan, J., & Swanjaya, D. (2020). Perbandingan Arsitektur Visual Geometry Group dan MobileNet Pada Pengenalan Jenis Kayu. Prosiding SEMNAS INOTEK (Seminar Nasional Inovasi Teknologi), 4(3), 185–190. https://proceeding.unpkediri.ac.id/index.php/inotek/article/view/84
Gulati, S., & Bhogal, R. K. (2020). Serving the Dermatologists: Skin Diseases Detection. In Advances in Intelligent Systems and Computing (Vol. 933). Springer Singapore. https://doi.org/10.1007/978-981-13-7166-0_80
Gunawan, R. J., Irawan, B., & Setianingsih, C. (2021). Pengenalan Ekspresi Wajah Berbasis Convolutional Neural Network Dengan Model Arsitektur VGG16. Engineering, 8(5), 6442–6454.
Handoyo, F., & Anwar, N. (2023). Rancang Bangun Aplikasi Penjualan Buket Bunga Berbasis Web. IKRA-ITH Informatika?: Jurnal Komputer Dan Informatika, 7(3), 40–46. https://doi.org/10.37817/ikraith-informatika.v7i3.3054
Lestari, R. (2022). Hubungan Sanitasi Lingkungan Dengan Gejala Penyakit Kulit Di Wilayah Kerja Puskesmas Sukamenanti Kabupaten Pasaman Barat. JURNAL NTHN?: Nan Tongga Health and Nursing, 16(1), 14–23.
Li, H., Pan, Y., Zhao, J., & Zhang, L. (2021). Skin disease diagnosis with deep learning: A review. Neurocomputing, 464(Hongfeng Li), 364–393. https://doi.org/10.1016/j.neucom.2021.08.096
Li, L. F., Wang, X., Hu, W. J., Xiong, N. N., Du, Y. X., & Li, B. S. (2020). Deep Learning in Skin Disease Image Recognition: A Review. IEEE Access, 8, 208264–208280. https://doi.org/10.1109/ACCESS.2020.3037258
Listio, S. W. P. (2022). Performance of Deep Learning Inception Model and MobileNet Model on Gender Prediction Through Eye Image. Sinkron, 7(4), 2593–2601. https://doi.org/10.33395/sinkron.v7i4.11887
Novelinda Permata Wulandari, D. F. (2021). Analisa Perbandingan Algoritma CNN Dan MLP Dalam Mendeteksi Penyakit COVID-19 Pada Citra X-Ray Paru. Sains, Aplikasi, Komputasi Dan Teknologi Informasi Vol 3, No 2, Agustus 2021, Pp. 44-52, 3(2), 44.
Nufus, N., Ariffin, D. M., Satyawan, A. S., Nugraha, R. A. S., Asysyakuur, M. I., Marlina, N. N. A., Parangin, C. H., & Ema, E. (2021). Sistem Pendeteksi Pejalan Kaki Di Lingkungan Terbatas Berbasis SSD MobileNet V2 Dengan Menggunakan Gambar 360° Ternormalisasi. Prosiding Seminar Nasional Sains Teknologi Dan Inovasi Indonesia (SENASTINDO), 3(November), 123–134. https://doi.org/10.54706/senastindo.v3.2021.123
RAMADHAN, M. A. (2022). Computer Vision Untuk Mengetahui Kematangan Jambu Kristal Menggunakan Metode Convolutional Neural Network. In PROGRAM STUDI INFORMATIKA JURUSAN TEKNIK INFORMATIKA FAKULTAS TEKNIK INDUSTRI UNIVERSITAS PEMBANGUNAN NASIONAL ”VETERAN” YOGYAKARTA. http://eprints.upnyk.ac.id/30094/6/ABSTRAK.pdf%0Ahttp://eprints.upnyk.ac.id/30094/5/SKRIPSI FULL_Muhammad Alifadin Ramadhan_123150128.pdf
Raup, A., Ridwan, W., Khoeriyah, Y., Supiana, S., & Zaqiah, Q. Y. (2022). Deep Learning dan Penerapannya dalam Pembelajaran. JIIP - Jurnal Ilmiah Ilmu Pendidikan, 5(9), 3258–3267. https://doi.org/10.54371/jiip.v5i9.805
Rismanto, R., Yunhasnawa, Y., & Mauliwidya, M. (2019). Pengembangan Sistem Pakar Untuk Diagnosa Penyakit Kulit Pada Manusia Menggunakan Metode Naive Bayes. Jurnal Ilmiah Teknologi Informasi Dan Robotika, 1(1), 18–24. https://doi.org/10.33005/jifti.v1i1.8
Sakti, K. E., Mardiana, M., & Pradipta, R. A. (2023). Rancang Bangun Aplikasi Web Pendeteksi Warna Pada Pixel Gambar Dengan Knn Classifier. Jurnal Informatika Dan Teknik Elektro Terapan, 11(2). https://doi.org/10.23960/jitet.v11i2.3009
Saputra, T. O., & Alamsyah, D. (2023). Klasifikasi Penyakit Cacar Monyet Menggunakan Metode Convolutional Neural Network. MDP Student Conference, 2(1), 179–184. https://doi.org/10.35957/mdp-sc.v2i1.4400
Saputra, W. (2021). Penerapan Metode K-Nearest Neighbor Untuk Mendeteksi Penyakit Kulit. Jurnal Informatika Atma Jogja, Volume 2, Nomor 1, Mei 2021: 63-72, 63–72. http://e-journal.uajy.ac.id/23371/%0Ahttp://e-journal.uajy.ac.id/23371/1/1607086671.pdf
Srinivasu, P. N., Sivasai, J. G., Ijaz, M. F., Bhoi, A. K., Kim, W., & Kang, J. J. (2021). Networks with MobileNet V2 and LSTM. Sensors 2021, 21, 2852, 1–27.
Srisantyorini, T., & Cahyaningsih, N. F. (2019). Analisis Kejadian Penyakit Kulit pada Pemulung di Tempat Pengolahan Sampah Terpadu (TPST) Kelurahan Sumur Batu Kecamatan Bantar Gebang Kota Bekasi. Jurnal Kedokteran Dan Kesehatan, 15(2), 135. https://doi.org/10.24853/jkk.15.2.135-147
Susatyono, J. D. (2021). KECERDASAN BUATAN Kajian Konsep dan Penerapan. In M. . Indra Ava Dianta, S.Kom. (Ed.), Yayasan Prima Agus Teknik Redaksi: Jln Majapahit No 605 Semarang Tlpn. (024) 6723456 Fax . 024-6710144 Email: penerbit_ypat@stekom.ac.id (pp. 11–12). Yayasan Prima Agus Teknik Redaksi.
Utami, F. M., Magladena, R., & Saidah, S. (2023). Deteksi Jenis Kulit Wajah Menggunakan Convolutional Neural Network Arsitektur Mobilenet. EProceedings of Engineering, 9(6), 2897–2903.
Wijaya Kusuma, W., Rizal Isnanto, R., Fauzi, A., & Korespondensi, P. (2023). DenseNet121 Menggunakan Kerangka Kerja TensorFlow untuk Deteksi Jenis Hewan. Jurnal Teknik Komputer, 1(4), 141–147. https://doi.org/10.14710/jtk.v1i4.37009
Yudistira, N. (2021). Peran Big Data dan Deep Learning untuk Menyelesaikan Permasalahan Secara Komprehensif. EXPERT: Jurnal Manajemen Sistem Informasi Dan Teknologi, 11(2), 78. https://doi.org/10.36448/expert.v11i2.2063

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