Detection and Classification of Hysteroscopic Images Using Deep Learning

Author:

Raimondo Diego1ORCID,Raffone Antonio23,Salucci Paolo2,Raimondo Ivano45,Capobianco Giampiero6ORCID,Galatolo Federico Andrea7,Cimino Mario Giovanni Cosimo Antonio7ORCID,Travaglino Antonio8,Maletta Manuela2,Ferla Stefano2ORCID,Virgilio Agnese2ORCID,Neola Daniele3,Casadio Paolo12ORCID,Seracchioli Renato12ORCID

Affiliation:

1. Division of Gynaecology and Human Reproduction Physiopathology, IRCCS Azienda Ospedaliero-Universitaria di Bologna, 40138 Bologna, Italy

2. Department of Medical and Surgical Sciences (DIMEC), University of Bologna, 40127 Bologna, Italy

3. Department of Neuroscience, Reproductive Sciences and Dentistry, School of Medicine, University of Naples Federico II, 80131 Naples, Italy

4. Department of Biomedical Sciences, University of Sassari, 07100 Sassari, Italy

5. Gynecology and Breast Care Center, Mater Olbia Hospital, 07026 Olbia, Italy

6. Gynecologic and Obstetric Unit, Department of Medical, Surgical and Experimental Sciences, University of Sassari, 07100 Sassari, Italy

7. Department of Information Engineering, University of Pisa, 56100 Pisa, Italy

8. Unit of Pathology, Department of Medicine and Technological Innovation, University of Insubria, 21100 Varese, Italy

Abstract

Background: Although hysteroscopy with endometrial biopsy is the gold standard in the diagnosis of endometrial pathology, the gynecologist experience is crucial for a correct diagnosis. Deep learning (DL), as an artificial intelligence method, might help to overcome this limitation. Unfortunately, only preliminary findings are available, with the absence of studies evaluating the performance of DL models in identifying intrauterine lesions and the possible aid related to the inclusion of clinical factors in the model. Aim: To develop a DL model as an automated tool for detecting and classifying endometrial pathologies from hysteroscopic images. Methods: A monocentric observational retrospective cohort study was performed by reviewing clinical records, electronic databases, and stored videos of hysteroscopies from consecutive patients with pathologically confirmed intrauterine lesions at our Center from January 2021 to May 2021. Retrieved hysteroscopic images were used to build a DL model for the classification and identification of intracavitary uterine lesions with or without the aid of clinical factors. Study outcomes were DL model diagnostic metrics in the classification and identification of intracavitary uterine lesions with and without the aid of clinical factors. Results: We reviewed 1500 images from 266 patients: 186 patients had benign focal lesions, 25 benign diffuse lesions, and 55 preneoplastic/neoplastic lesions. For both the classification and identification tasks, the best performance was achieved with the aid of clinical factors, with an overall precision of 80.11%, recall of 80.11%, specificity of 90.06%, F1 score of 80.11%, and accuracy of 86.74 for the classification task, and overall detection of 85.82%, precision of 93.12%, recall of 91.63%, and an F1 score of 92.37% for the identification task. Conclusion: Our DL model achieved a low diagnostic performance in the detection and classification of intracavitary uterine lesions from hysteroscopic images. Although the best diagnostic performance was obtained with the aid of clinical data, such an improvement was slight.

Publisher

MDPI AG

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