scholarly journals Fundus Camera Imaging and Mobile Phone Opthalmoscopy for Identification of Diabetic Retinopathy

Diabetic Retinopathy (DR) is the retinal abnormalities arise on diabetic patients. Initial retinal screening is the super approach to prevent from diabetic retinopathy. Fundus imaging with good quality and large field is a popular method for DR identification and prevention. In this paper two fundus imaging methods are simulated. The first method is based on fundus camera which is used in the hospital to capture the retina image and In the second method Mobile phone with good camera quality, light-emitting diode (LED) and 28D lens and is used as an indirect ophthalmoscope. The results are shown and compared in terms of precision, recall and accuracy.

2016 ◽  
Vol 2016 ◽  
pp. 1-9 ◽  
Author(s):  
Dóra J. Eszes ◽  
Dóra J. Szabó ◽  
Greg Russell ◽  
Phil Kirby ◽  
Edit Paulik ◽  
...  

Introduction.Diabetic retinopathy (DR) is a sight-threatening complication of diabetes. Telemedicine tools can prevent blindness. We aimed to investigate the patients’ satisfaction when using such tools (fundus camera examination) and the effect of demographic and socioeconomic factors on participation in screening.Methods.Pilot study involving fundus camera screening and self-administered questionnaire on participants’ experience during fundus examination (comfort, reliability, and future interest in participation), as well as demographic and socioeconomic factors was performed on 89 patients with known diabetes in Csongrád County, a southeastern region of Hungary.Results.Thirty percent of the patients had never participated in any ophthalmological screening, while 25.7% had DR of some grade based upon a standard fundus camera examination and UK-based DR grading protocol (Spectra™ software). Large majority of the patients were satisfied with the screening and found it reliable and acceptable to undertake examination under pupil dilation; 67.3% were willing to undergo nonmydriatic fundus camera examination again. There was a statistically significant relationship between economic activity, education and marital status, and future interest in participation.Discussion.Participants found digital retinal screening to be reliable and satisfactory. Telemedicine can be a strong tool, supporting eye care professionals and allowing for faster and more comfortable DR screening.


2016 ◽  
Vol 2016 ◽  
pp. 1-7 ◽  
Author(s):  
Giuseppe Scarpa ◽  
Francesca Urban ◽  
Stela Vujosevic ◽  
Michele Tessarin ◽  
Giovanni Gallo ◽  
...  

Aims. The study aimed to present the experience of a screening programme for early detection of diabetic retinopathy (DR) using a nonmydriatic fundus camera, evaluating the feasibility in terms of validity, resources absorption, and future advantages of a potential application, in an Italian local health authority. Methods. Diabetic patients living in the town of Ponzano, Veneto Region (Northern Italy), were invited to be enrolled in the screening programme. The “no prevention strategy” with the inclusion of the estimation of blindness related costs was compared with screening costs in order to evaluate a future extensive and feasible implementation of the procedure, through a budget impact approach. Results. Out of 498 diabetic patients eligible, 80% was enrolled in the screening programme. 115 patients (34%) were referred to an ophthalmologist and 9 cases required prompt treatment for either proliferative DR or macular edema. Based on the pilot data, it emerged that an extensive use of the investigated screening programme, within the Greater Treviso area, could prevent 6 cases of blindness every year, resulting in a saving of €271,543.32 (−13.71%). Conclusions. Fundus images obtained with a nonmydriatic fundus camera could be considered an effective, cost-sparing, and feasible screening tool for the early detection of DR, preventing blindness as a result of diabetes.


2014 ◽  
Vol 2014 ◽  
pp. 1-5 ◽  
Author(s):  
Shuang Li ◽  
Qiang-Li Wang ◽  
Xin Chen ◽  
Xian-qiang Mi

Objective. The goal of this study was to investigate the therapeutic efficacy of 670 nm light-emitting diode (LED) irradiation on the diabetic retinopathy (DR) using hypoxic rhesus monkey choroid-retinal (RF/6A) cells as the model system.Background Data. Treatment with light in the spectrum from red to near-infrared region has beneficial effect on tissue injury and 670 nm LED is currently under clinical investigation for retinoprotective therapy.Methods. Studies were conducted in the cultured cells under hypoxia treated by cobalt chloride (CoCl2). After irradiation by 670 nm LED with different power densities, cell viability, cytochrome C oxidase activity, and ATP concentration were measured.Results. The irradiation of 670 nm LED significantly improved cell viability, cytochrome C oxidase activity, and ATP concentration in the hypoxia RF/6A cells.Conclusion. 670 nm LED irradiation could recover the hypoxia damage caused by CoCl2. Photobiomodulation of 670 nm LED plays a potential role for the treatment of diabetic retinopathy.


2021 ◽  
Vol 5 (Supplement_1) ◽  
pp. A419-A420
Author(s):  
Zack Dvey-Aharon ◽  
Petri Huhtinen

Abstract According to estimations of the World Health Organization (WHO), there are almost 500M people in the world that suffer from diabetes. Projections suggest this number will surpass 700M by 2045 with global prevalence surpassing 7%. This huge population, alongside people with pre-diabetics, is prone to develop diabetic retinopathy, the leading cause of vision loss in the working age. While early screening can help prevent most cases of vision loss caused by diabetic retinopathy, the vast majority of patients are not being screened periodically as the guidelines instruct. The challenge is to find a reliable and convenient method to screen patients so that efficacy in detection of referral diabetic retinopathy is sufficient while integration with the flow of care is smooth, easy, simple, and cost-efficient. In this research, we described a screening process for more-than-mild retinopathy through the application of artificial intelligence (AI) algorithms on images obtained by a portable, handheld fundus camera. 156 patients were screened for mtmDR indication. Four images were taken per patient, two macula centered and two optic disc centered. The 624 images were taken using the Optomed Aurora fundus camera and were uploaded using Optomed Direct-Upload. Fully blinded and independently, a certified, experienced ophthalmologist (contracted by Optomed and based in Finland) reviewed each patient to determine ground truth. Indications that are different than mtmDR were also documented by the ophthalmologist to meet exclusion criteria. Data was obtained from anonymized images uploaded to the cloud-based AEYE-DS system and analysis results from the AI algorithm were promptly returned to the users. Of the 156 patients, a certified ophthalmologist determined 100% reached sufficient quality of images for grading, and 36 had existing retinal diseases that fall under exclusion criteria, thus, 77% of the participants met the participation criteria. Of the remaining 120 patients, the AEYE-DS system determined that 2 patients had at least one insufficient quality image. AEYE-DS provided readings for each of the 118 remaining patients (98.3% of all patients). These were statistically compared to the output of the ground truth arm. The patient ground truth was defined as the most severe diagnosis from the four patient images; the ophthalmologist diagnosed 54 patients as mtmDR+ (45% prevalence). Of the 54 patients with referable DR, 50 were diagnosed and of the 64 mtmDR- patients, 61 were correctly diagnosed by the AI. In summary, the results of the study in terms of sensitivity and specificity were 92.6% and 95.3%, respectively. The results indicated accurate classification of diabetic patients that required referral to the ophthalmologist and those who did not. The results also demonstrated the potential of efficient screening and easy workflow integration into points of care such as endocrinology clinics.


2020 ◽  
Author(s):  
James Benjamin ◽  
Justin Sun ◽  
Devon Cohen ◽  
Joseph Matz ◽  
Angela Barbera ◽  
...  

Abstract Background: Using telemedicine for diabetic retinal screening is becoming popular especially amongst at-risk urban communities with poor access to care. The goal of the diabetic telemedicine project at Temple University Hospital is to improve cost-effective access to appropriate retinal care to those in need of close monitoring and/or treatment.Methods: This will be a retrospective review of 15 months of data from March 2016 to May 2017. We will investigate how many patients were screened, how interpretable the photographs were, how often the photographs generated a diagnosis of diabetic retinopathy (DR) based on the screening photo, and how many patients followed-up for an exam in the office, if indicated.Results: Six-hundred eighty-nine (689) digital retinal screening exams on 1377 eyes of diabetic patients were conducted in Temple’s primary care clinic. The majority of the photographs were read to have no retinopathy (755, 54.8%). Among all of the screening exams, 357 (51.8%) triggered a request for a referral to ophthalmology. Four-hundred forty-nine (449, 32.6%) of the photos were felt to be uninterpretable by the clinician. Referrals were meant to be requested for DR found in one or both eyes, inability to assess presence of retinopathy in one or both eyes, or for suspicion of a different ophthalmic diagnosis. Sixty-seven patients (9.7%) were suspected to have another ophthalmic condition based on other findings in the retinal photographs. Among the 34 patients that were successfully completed a referral visit to Temple ophthalmology, there was good concordance between the level of DR detected by their screening fundus photographs and visit diagnosis.Conclusions: Although a little more than half of the patients did not have diabetic eye disease, about half needed a referral to ophthalmology. However, only 9.5% of the referral-warranted exams actually received an eye exam. Mere identification of referral-warranted diabetic retinopathy or other eye disease is not enough. A successful telemedicine screening program must close the communication gap between screening and diagnosis by reviewer to provide timely follow-up by eye care specialists.


2017 ◽  
Vol 2017 ◽  
pp. 1-5 ◽  
Author(s):  
Bailey Y. Shen ◽  
Shizuo Mukai

Purpose. Nonmydriatic fundus cameras allow retinal photography without pharmacologic dilation of the pupil. However, currently available nonmydriatic fundus cameras are bulky, not portable, and expensive. Taking advantage of recent advances in mobile technology, we sought to create a nonmydriatic fundus camera that was affordable and could be carried in a white coat pocket. Methods. We built a point-and-shoot prototype camera using a Raspberry Pi computer, an infrared-sensitive camera board, a dual infrared and white light light-emitting diode, a battery, a 5-inch touchscreen liquid crystal display, and a disposable 20-diopter condensing lens. Our prototype camera was based on indirect ophthalmoscopy with both infrared and white lights. Results. The prototype camera measured 133mm×91mm×45mm and weighed 386 grams. The total cost of the components, including the disposable lens, was $185.20. The camera was able to obtain good-quality fundus images without pharmacologic dilation of the pupils. Conclusion. A fully functional, inexpensive, handheld, nonmydriatic fundus camera can be easily assembled from a relatively small number of components. With modest improvements, such a camera could be useful for a variety of healthcare professionals, particularly those who work in settings where a traditional table-mounted nonmydriatic fundus camera would be inconvenient.


Diabetic Retinopathy (DR) is the leading cause of disease to blindness of people globally. The retinal screening examinations of diabetic patients is needed to prevent the disease. There are many untreated and undiagnosed cases present in especially in India. DR requires smart technique to detect it. In this paper, we proposed a deep learning based architecture for detecting the DR. The experiments are done on the DR Dataset available in UCI machine Learning Repository. The results obtained from the experiments are satisfactory.


2020 ◽  
Author(s):  
Lanhua Wang ◽  
Ling Jin ◽  
Wei Wang ◽  
Xia Gong ◽  
Yuting Li ◽  
...  

AbstractPurposeTo investigate the associations between renal function and the presence of diabetic retinopathy (DR) in diabetic patients.MethodsA total of 1877 diabetic participants aged 30 to 80 years were consecutively recruited from October 2017 to April 2019. All participants underwent blood and urine analyses and standardized 7-field fundus imaging. The presence of DR, vision-threatening DR (VTDR) and DME was graded based on the fundus photographs. Renal function was defined as normal, mildly impaired or chronic kidney disease (CKD) based on different estimated glomerular filtration rates (GFRs).ResultsUnlike a normal GFR, CKD was significantly associated with any DR (OR=1.89, P=0.017) and VTDR (OR=2.76, P=0.009), and mildly impaired renal function was associated with only any DR (OR=1.39, P=0.031). The analysis of the effect of microalbuminuria on relationship between GFR and DR showed that the GFR was associated with any DR only in the presence of microalbuminuria, while the GFR was an independent risk factor for VTDR regardless of microalbuminuria status (all P<0.05). The risks of any DR (OR=1.74 for quartile 2 and 3.09 for quartile 4) and VTDR (OR=3.27 for quartile 2 and 6.41 for quartile 4) increased gradually as the microalbuminuria quartile increased (all P<0.05). The third (OR=2.99, P=0.029) and fourth microalbuminuria quartiles (OR=4.74, P=0.002) were independent DME risk factors.ConclusionsThere was a strong association between GFR and VTDR, whereas the association of GFR and any DR was significant only under the premise of microalbuminuria. High microalbuminuria was significantly associated with DR and DME.


2013 ◽  
Vol 52 (36) ◽  
pp. 8779 ◽  
Author(s):  
Felix Kimme ◽  
Peter Brick ◽  
Sangam Chatterjee ◽  
Tran Quoc Khanh

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