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      Automatic Detection of Acromegaly From Facial Photographs Using Machine Learning Methods

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          Abstract

          Background

          Automatic early detection of acromegaly is theoretically possible from facial photographs, which can lessen the prevalence and increase the cure probability.

          Methods

          In this study, several popular machine learning algorithms were used to train a retrospective development dataset consisting of 527 acromegaly patients and 596 normal subjects. We firstly used OpenCV to detect the face bounding rectangle box, and then cropped and resized it to the same pixel dimensions. From the detected faces, locations of facial landmarks which were the potential clinical indicators were extracted. Frontalization was then adopted to synthesize frontal facing views to improve the performance. Several popular machine learning methods including LM, KNN, SVM, RT, CNN, and EM were used to automatically identify acromegaly from the detected facial photographs, extracted facial landmarks, and synthesized frontal faces. The trained models were evaluated using a separate dataset, of which half were diagnosed as acromegaly by growth hormone suppression test.

          Results

          The best result of our proposed methods showed a PPV of 96%, a NPV of 95%, a sensitivity of 96% and a specificity of 96%.

          Conclusions

          Artificial intelligence can automatically early detect acromegaly with a high sensitivity and specificity.

          Highlights

          • An automatic and handy diagnosis system for acromegaly was developed.

          • Several popular machine learning methods including LM, KNN, SVM, RT, CNN, and EM were used to automatically identify acromegaly from the detected facial photographs, extracted facial landmarks, and synthesized frontal faces.

          • The algorithm allows medical practitioners and patients to proactively track face changes and detect acromegaly earlier and automatically, thus to facilitate cures and increase the likelihood of preventing irreversible complications of excessive secretion of growth hormone.

          We developed an automatic and handy diagnosis system for acromegaly, which can allow medical practitioners and patients to proactively track face changes and detect acromegaly earlier and automatically, thus to facilitate cures and increase the likelihood of preventing irreversible complications of excessive secretion of growth hormone.

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          Most cited references16

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          Acromegaly: an endocrine society clinical practice guideline.

          The aim was to formulate clinical practice guidelines for acromegaly.
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            Artificial intelligence in medicine.

            Artificial Intelligence (AI) is a general term that implies the use of a computer to model intelligent behavior with minimal human intervention. AI is generally accepted as having started with the invention of robots. The term derives from the Czech word robota, meaning biosynthetic machines used as forced labor. In this field, Leonardo Da Vinci's lasting heritage is today's burgeoning use of robotic-assisted surgery, named after him, for complex urologic and gynecologic procedures. Da Vinci's sketchbooks of robots helped set the stage for this innovation. AI, described as the science and engineering of making intelligent machines, was officially born in 1956. The term is applicable to a broad range of items in medicine such as robotics, medical diagnosis, medical statistics, and human biology-up to and including today's "omics". AI in medicine, which is the focus of this review, has two main branches: virtual and physical. The virtual branch includes informatics approaches from deep learning information management to control of health management systems, including electronic health records, and active guidance of physicians in their treatment decisions. The physical branch is best represented by robots used to assist the elderly patient or the attending surgeon. Also embodied in this branch are targeted nanorobots, a unique new drug delivery system. The societal and ethical complexities of these applications require further reflection, proof of their medical utility, economic value, and development of interdisciplinary strategies for their wider application.
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              Medical progress: Acromegaly.

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                Author and article information

                Contributors
                Journal
                EBioMedicine
                EBioMedicine
                EBioMedicine
                Elsevier
                2352-3964
                15 December 2017
                January 2018
                15 December 2017
                : 27
                : 94-102
                Affiliations
                [a ]Department of Neurosurgery, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences, No. 1 Shuaifuyuan Hutong, Dongcheng District, Beijing 100730, China
                [b ]Department of Breast Surgical Oncology, China National Cancer Center/Cancer Hospital, Chinese Academy of Medical Sciences, Peking Union Medical College, Chaoyangqu, Panjiayuan-Nanli 17, Beijing 100021, PR China
                [c ]Department of Neurosurgery, Shanghai Institute of Neurosurgery, PLA Institute of Neurosurgery, Changzheng Hospital, Second Military Medical University, 415 Fengyang Road, Shanghai 200003, China
                [d ]College of Computer Science and Technology, Zhejiang University, No. 38 Zheda Road, Hangzhou, Zhejiang 310027, China
                [e ]Healthcare big data lab, Tencent Technology (Shenzhen) Company Limited, Kejizhongyi Avenue, Hi-tech Park, Nanshan District, Shenzhen, 518057, China
                [f ]Synthetic Intelligence Laboratory, Massachusetts Institute of Technology, Cambridge, MA 02139, United States
                [g ]Computational Neuroscience Laboratory, Oxford University, Oxford OX1 3QD, UK
                Author notes
                [* ]Corresponding author. kongyg@ 123456pumch.cn
                [1]

                These 3 authors contribute equally to this article.

                Article
                S2352-3964(17)30496-6
                10.1016/j.ebiom.2017.12.015
                5828367
                29269039
                a956f788-1719-4200-a335-0428bb2036c5
                © 2017 The Authors

                This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

                History
                : 12 May 2017
                : 6 December 2017
                : 14 December 2017
                Categories
                Research Paper

                automatic acromegaly diagnosis,artificial intelligence,machine learning,face recognition,convolutional neural network

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