Purpose: To evaluate the 1-year visual acuity predictive performance of an artificial intelligence (AI) based model applied to optical coherence tomography angiography (OCT-A) vascular layers scans from eyes with a full-thickness macular hole (FTMH). Methods: In this observational cross-sectional, single-center study, 35 eyes of 35 patients with FTMH were analyzed by OCT-A before and 1-year after surgery. Superficial vascular plexus (SVP) and deep vascular plexus (DVP) images were collected for the analysis. AI approach based on convolutional neural networks (CNN) was used to generate a continuous predictive variable based on both SVP and DPV. Different pre-trained CNN networks were used for feature extraction and compared for predictive accuracy. Results: Among the different tested models, the inception V3 network, applied on the combination of deep and superficial OCT-A images, showed the most significant differences between the two obtained image clusters defined in C1 and C2 (best-corrected visual acuity [BCVA] C1 = 49.10 [±18.60 SD] and BCVA C2 = 66.67 [±16.00 SD, p = 0.005]). Conclusions: The AI-based analysis of preoperative OCT-A images of eyes affected by FTMH may be a useful support system in setting up visual acuity recovery prediction. The combination of preoperative SVP and DVP images showed a significant morphological predictive performance for visual acuity recovery.

Rizzo, S., Savastano, A., Lenkowicz, J., Savastano, M. C., Boldrini, L., Bacherini, D., Falsini, B., Valentini, V., Artificial intelligence and oct angiography in full thickness macular hole. New developments for personalized medicine, <<DIAGNOSTICS>>, 2021; 11 (12): 2319-N/A. [doi:10.3390/diagnostics11122319] [http://hdl.handle.net/10807/201383]

Artificial intelligence and oct angiography in full thickness macular hole. New developments for personalized medicine

Rizzo, Stanislao;Savastano, Alfonso;Lenkowicz, Jacopo;Savastano, Maria Cristina;Boldrini, Luca;Falsini, Benedetto;Valentini, Vincenzo
2021

Abstract

Purpose: To evaluate the 1-year visual acuity predictive performance of an artificial intelligence (AI) based model applied to optical coherence tomography angiography (OCT-A) vascular layers scans from eyes with a full-thickness macular hole (FTMH). Methods: In this observational cross-sectional, single-center study, 35 eyes of 35 patients with FTMH were analyzed by OCT-A before and 1-year after surgery. Superficial vascular plexus (SVP) and deep vascular plexus (DVP) images were collected for the analysis. AI approach based on convolutional neural networks (CNN) was used to generate a continuous predictive variable based on both SVP and DPV. Different pre-trained CNN networks were used for feature extraction and compared for predictive accuracy. Results: Among the different tested models, the inception V3 network, applied on the combination of deep and superficial OCT-A images, showed the most significant differences between the two obtained image clusters defined in C1 and C2 (best-corrected visual acuity [BCVA] C1 = 49.10 [±18.60 SD] and BCVA C2 = 66.67 [±16.00 SD, p = 0.005]). Conclusions: The AI-based analysis of preoperative OCT-A images of eyes affected by FTMH may be a useful support system in setting up visual acuity recovery prediction. The combination of preoperative SVP and DVP images showed a significant morphological predictive performance for visual acuity recovery.
2021
Inglese
Rizzo, S., Savastano, A., Lenkowicz, J., Savastano, M. C., Boldrini, L., Bacherini, D., Falsini, B., Valentini, V., Artificial intelligence and oct angiography in full thickness macular hole. New developments for personalized medicine, <<DIAGNOSTICS>>, 2021; 11 (12): 2319-N/A. [doi:10.3390/diagnostics11122319] [http://hdl.handle.net/10807/201383]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/201383
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