Real-time detection of acromegaly from facial images with artificial intelligence

Author:

Kizilgul Muhammed1ORCID,Karakis Rukiye2,Dogan Nurettin3,Bostan Hayri1ORCID,Yapici Muhammed Mutlu4,Gul Umran1,Ucan Bekir1,Duman Elvan5,Duger Hakan1,Cakal Erman1,Akin Omer6

Affiliation:

1. University of Health Sciences, Diskapi Yildirim Beyazit Training and Research Hospital, Department of Endocrinology , Ankara , Turkey

2. Sivas Cumhuriyet University, Faculty of Technology, Software Engineering Department , Sivas , Turkey

3. Selçuk University, Faculty of Technology, Computer Engineering Department , Konya , Turkey

4. Ankara University, Elmadağ Vocational School, Computer Technologies Department , Ankara , Turkey

5. Burdur Mehmet Akif Ersoy University, Faculty of Technology, Software Engineering Department , Burdur , Turkey

6. TOBB ETU, Faculty of Science and Literature, Mathematics Department , Ankara , Turkey

Abstract

Abstract Objective Despite improvements in diagnostic methods, acromegaly is still a late-diagnosed disease. In this study, it was aimed to automatically recognize acromegaly disease from facial images by using deep learning methods and to facilitate the detection of the disease. Design Cross-sectional, single-centre study Methods The study included 77 acromegaly (52.56 ± 11.74, 34 males/43 females) patients and 71 healthy controls (48.47 ± 8.91, 39 males/32 females), considering gender and age compatibility. At the time of the photography, 56/77 (73%) of the acromegaly patients were in remission. Normalized images were obtained by scaling, aligning, and cropping video frames. Three architectures named ResNet50, DenseNet121, and InceptionV3 were used for the transfer learning-based convolutional neural network (CNN) model developed to classify face images as “Healthy” or “Acromegaly”. Additionally, we trained and integrated these CNN machine learning methods to create an Ensemble Method (EM) for facial detection of acromegaly. Results The positive predictive values obtained for acromegaly with the ResNet50, DenseNet121, InceptionV3, and EM were calculated as 0.958, 0.965, 0.962, and 0.997, respectively. The average sensitivity, specificity, precision, and correlation coefficient values calculated for each of the ResNet50, DenseNet121, and InceptionV3 models are quite close. On the other hand, EM outperformed these three CNN architectures and provided the best overall performance in terms of sensitivity, specificity, accuracy, and precision as 0.997, 0.997, 0.997, and 0.998, respectively. Conclusions The present study provided evidence that the proposed AcroEnsemble Model might detect acromegaly from facial images with high performance. This highlights that artificial intelligence programs are promising methods for detecting acromegaly in the future.

Publisher

Oxford University Press (OUP)

Subject

Endocrinology,General Medicine,Endocrinology, Diabetes and Metabolism

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