2021
DOI: 10.31284/j.kernel.2021.v2i1.1884
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Diagnosa COVID-19 Chest X-Ray Dengan Convolution Neural Network Arsitektur Resnet-152

Abstract: The availability of medical aids in adequate quantities is very much needed to assist the work of the medical staff in dealing with the very large number of Covid patients. Artificial Intelligence (AI) with the Deep Learning (DL) method, especially the Convolution Neural Network (CNN), is able to diagnose Chest X-ray images generated by the Computer Tomography Scanner (C.T. Scan) against certain diseases (Covid). Resnet Version-152 architecture was used in this study to train a dataset of 10.300 images, consis… Show more

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Cited by 5 publications
(4 citation statements)
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“…To enhance accuracy, many deep learning architectures attempt to add a growing number of layers, which reduces processing power and causes gradient descent difficulties [12]- [14]. EfficientNet, in contrast to other architectural innovations, employs a scalable and balanced increase of layer thickness and width [10], [15]. Throughout the development of each iteration, EfficientNet is able to overcome gradient descent issues, allowing it to enhance computer capabilities in obtaining high accuracy [16], [17] (Figure 6).…”
Section: B Efficientnetmentioning
confidence: 99%
“…To enhance accuracy, many deep learning architectures attempt to add a growing number of layers, which reduces processing power and causes gradient descent difficulties [12]- [14]. EfficientNet, in contrast to other architectural innovations, employs a scalable and balanced increase of layer thickness and width [10], [15]. Throughout the development of each iteration, EfficientNet is able to overcome gradient descent issues, allowing it to enhance computer capabilities in obtaining high accuracy [16], [17] (Figure 6).…”
Section: B Efficientnetmentioning
confidence: 99%
“…Dunia medis telah banyak menggunakan teknologi Artificial Intelligence (AI), selain akurasi yang tinggi (Hastomo, 2021b(Hastomo, , 2021aHastomo, Bayangkari Karno, Kalbuana, Meiriki, & Sutarno, 2021;Satyo, Karno, Hastomo, Efendi, & Irawati, 2021), juga dengan memanfaatkan AI diagnosa dan penanganan menjadi lebih mudah, cepat, berbiaya murah (Hastomo, 2021a(Hastomo, , 2021bSatyo et al, 2021), mampu menjangkau daerah pelosok (daerah jauh dari pusat kesehatan) dan sangat membantu para medis terutama dalam era pandemi covid dimana kapasitas medis dan jumlah pasien sangat tidak berimbang. Agar AI dapat diterapkan dalam dunia medis tentu sebelumnya telah melalui proses machine learning (ML) dengan menggunakan data dalam jumlah yang cukup memadai untuk proses training (Karno, Hastomo, & Wardhana, 2020).…”
Section: Pendahuluanunclassified
“…Penyakit Covid ataupun Covid-19 merupakan peradangan yang bisa mencemari sistem respirasi. Lebih dari 2 tahun kita sudah hadapi pandemi Covid-19 semenjak awal kali muncul di kota wuhan Cina menjelang akhir Desember tahun 2019 [1]. Dalam beberapa bulan virus ini dengan cepat menyebar ke berbagai belahan dunia [2].…”
Section: Pendahuluanunclassified