TY - JOUR
T1 - Noninvasive diagnostic imaging for endometriosis part 1
T2 - a systematic review of recent developments in ultrasound, combination imaging, and artificial intelligence
AU - Avery, Jodie C.
AU - Deslandes, Alison
AU - Freger, Shay
AU - Leonardi, Mathew
AU - Lo, Glen
AU - Carneiro, Gustavo
AU - Condous, G.
AU - Hull, Mary Louise
AU - Imagendo Study Group
AU - O'Hara, Rebecca
AU - Knox, Steven
AU - Panuccio, Catrina
AU - Sirop, Aisha
AU - Abbott, Jason
AU - Gonzalez-Chica, David
AU - Wang, Hu
AU - Chen, Tim
AU - To, Minh Son
AU - Zhang, Yuan
AU - Yang, Natalie
AU - Uzuner, Cansu
AU - Holdsworth-Carson, Sarah
AU - Nguyen, Tran
AU - Abeygunasekara, Nimantha
AU - Richards, Misha
AU - Simpson, Annie
AU - Voyvodic, Frank
AU - Jenkins, Melissa
PY - 2024/2
Y1 - 2024/2
N2 - Endometriosis affects 1 in 9 women and those assigned female at birth. However, it takes 6.4 years to diagnose using the conventional standard of laparoscopy. Noninvasive imaging enables a timelier diagnosis, reducing diagnostic delay as well as the risk and expense of surgery. This review updates the exponentially increasing literature exploring the diagnostic value of endometriosis specialist transvaginal ultrasound (eTVUS), combinations of eTVUS and specialist magnetic resonance imaging, and artificial intelligence. Concentrating on literature that emerged after the publication of the IDEA consensus in 2016, we identified 6192 publications and reviewed 49 studies focused on diagnosing endometriosis using emerging imaging techniques. The diagnostic performance of eTVUS continues to improve but there are still limitations. eTVUS reliably detects ovarian endometriomas, shows high specificity for deep endometriosis and should be considered diagnostic. However, a negative scan cannot preclude endometriosis as eTVUS shows moderate sensitivity scores for deep endometriosis, with the sonographic evaluation of superficial endometriosis still in its infancy. The fast-growing area of artificial intelligence in endometriosis detection is still evolving, but shows great promise, particularly in the area of combined multimodal techniques. We finalize our commentary by exploring the implications of practice change for surgeons, sonographers, radiologists, and fertility specialists. Direct benefits for endometriosis patients include reduced diagnostic delay, better access to targeted therapeutics, higher quality operative procedures, and improved fertility treatment plans.
AB - Endometriosis affects 1 in 9 women and those assigned female at birth. However, it takes 6.4 years to diagnose using the conventional standard of laparoscopy. Noninvasive imaging enables a timelier diagnosis, reducing diagnostic delay as well as the risk and expense of surgery. This review updates the exponentially increasing literature exploring the diagnostic value of endometriosis specialist transvaginal ultrasound (eTVUS), combinations of eTVUS and specialist magnetic resonance imaging, and artificial intelligence. Concentrating on literature that emerged after the publication of the IDEA consensus in 2016, we identified 6192 publications and reviewed 49 studies focused on diagnosing endometriosis using emerging imaging techniques. The diagnostic performance of eTVUS continues to improve but there are still limitations. eTVUS reliably detects ovarian endometriomas, shows high specificity for deep endometriosis and should be considered diagnostic. However, a negative scan cannot preclude endometriosis as eTVUS shows moderate sensitivity scores for deep endometriosis, with the sonographic evaluation of superficial endometriosis still in its infancy. The fast-growing area of artificial intelligence in endometriosis detection is still evolving, but shows great promise, particularly in the area of combined multimodal techniques. We finalize our commentary by exploring the implications of practice change for surgeons, sonographers, radiologists, and fertility specialists. Direct benefits for endometriosis patients include reduced diagnostic delay, better access to targeted therapeutics, higher quality operative procedures, and improved fertility treatment plans.
KW - artificial intelligence
KW - combination imaging
KW - diagnosis
KW - Endometriosis
KW - ultrasound
UR - http://www.scopus.com/inward/record.url?scp=85183915881&partnerID=8YFLogxK
U2 - 10.1016/j.fertnstert.2023.12.008
DO - 10.1016/j.fertnstert.2023.12.008
M3 - Review article
AN - SCOPUS:85183915881
SN - 0015-0282
VL - 121
SP - 164
EP - 188
JO - Fertility and Sterility
JF - Fertility and Sterility
IS - 2
ER -