Ultrasound to Differentiate Benign From Malignant Ovarian Tumors—Are We There Yet?

Adnexal (ovarian) tumors present a complex problem. Ovarian cancer (Ovca) is the second most common gynecologic cancer in the United States with the highest mortality rate of all gynecologic cancer, 7th among all cancers, and with a general survival rate of 50%.1 Thus, missing Ovca when performing any kind of test (false negative) will have grave consequences but suspecting it when not present (false positive) can have almost as critical results with morbidity and mortality secondary to (unnecessary) intervention.

The purpose of this post is not to review the differential diagnosis of ovarian tumors nor to discuss chemical markers such as CA125 or cancer-specific signal found on cell-free DNA (cfDNA) but to concentrate on ultrasound. Some tumors are relatively easy to recognize because of defined ultrasound characteristics: corpus luteum with the classic “ring of fire” or endometrioma with the ground-glass appearance content, for instance (image 1a and b). Conversely, a large, multilocular lesion with solid components and profuse internal Doppler blood flow leaves little doubt about its malignant nature (image 2).

Image 2: A large, multilocular lesion with solid components.

What are the ultrasound characteristics we look at?

  1. Size: Unilocular cystic ovarian tumor < 10 cm in diameter or simple septated cystic ovarian tumor < 10 cm in diameter rarely, if ever, are neoplastic.2
  2. Volume: Normal volume for premenopausal and postmenopausal ovaries are < 20 cm3 and 10 cm3, respectively.
  3. Appearance: Risk of malignancy in simple, unilocular anechoic cyst, less than 5 cm is < 1% in premenopause and about 2.8% in postmenopause.3
  4. Blood flow criteria: The rationale is that arteries formed by neovascularization in malignant tumors lack tunica media, resulting in lowered impedance (= less resistance to blood flow). Thus, resistance indices will be lower in cancer than in benign tumors. Malignancy was suspected with Doppler indices: pulsatility index (PI)<1 and/or resistive index (RI)<0.4.4 However, too much overlap makes reliance on only Doppler unjustified.

A very important point is that the expert performs very well when analyzing the ultrasound images of an ovarian mass, with a sensitivity of 92–98% and a specificity of 89%. The issue is how to help the non-expert decide whether he/she can continue the care of the patient or needs to refer her to a specialist. Based on several ultrasound criteria, scoring systems were implemented. The first one, in 1990, included appearance (unilocular, unilocular solid, multilocular, multilocular solid, or solid cyst) and presence of papillae (graded according to their number: 0 [none], 1 [one to five], or 2 [more than five]). This method had a sensitivity (true positive rate, or chance that person testing positive actually has Ovca) for malignancy of 82% with a specificity (true negative rate or chance that person with a negative test does not have Ovca) of 92%.5 Two important additional scoring systems were described later: the Morphology Index (MI) combining tumor volume, wall structure, and septal structure and the Risk of Malignancy Index (RMI), the product of ultrasound morphology score, CA 125 level, and menopausal status.6 Additional systems included the Logistic Regression 1 (LR1) and 2 (LR2). None of the published scoring systems were superior to image assessment by an expert, including in a meta-analysis of 47 articles, including over 19000 adnexal masses7 and, in reality, were not used widely in clinical practice.

The International Ovarian Tumor Analysis (IOTA) models

In 2000, a large group of European experts (gynecologists, radiologists, statisticians, biology, and computer experts) published a standardized terminology for the characterization of adnexal masses.8

The two important systems are the Simple Rules (SR) and the Assessment of Different NEoplasias in the adneXa (ADNEX) model. These were externally validated in numerous centers across the world but not in the USA.9 Recently, however, validation on the largest hitherto US population was published.10 This study showed for the first time that the models were effective in this population, regardless of menopausal status or race. These models are easy to learn and are geared towards non-experts.11 It is important to note that the IOTA group was one of the first to incorporate acoustic shadow as a key feature, and the acoustic shadow has been shown to be an important sonographic feature to consider.12

  1. Simple Rules: The IOTA Simple-Rules consist of 2 sets of 5 elements each: benign and malignant.13 Three simple rules are applied: if only benign characteristics are present, the mass is classified as benign. If only malignant features are present, the mass is considered malignant. If no features or both are, the findings are inconclusive. This model works well in about 80% of cases. The other 20% should be referred to an expert.
  2. ADNEX model14: This is a multiclass prediction model to differentiate between benign and malignant tumors and allows automatic calculation of sub-classification of malignant tumors into borderline tumors, Stage I, and Stage II–IV primary cancers, and secondary metastatic tumors. “The advantage of this model is that it gives a personalized risk score for each patient, based on age, whether the patient is seen at an oncology center or not, maximal diameters of the lesion and the solid parts, number of cysts and papillary projections, whether acoustic shadows are present, whether ascites is present and CA125 value (if available, not mandatory for calculation). With a cut-off value for malignancy risk set at 10%, the ADNEX model (with CA125) had a sensitivity of 94.3%, with a specificity of 74%, positive predictive value of 76%, and negative predictive value of 93.6%.”14

The O-RADS model

In 2020, the American College of Radiology convened an international multidisciplinary committee that developed an ultrasound model based on an MRI model used in mammography (the BI-RADS atlas), the O-RADS model (the Ovarian-Adnexal Reporting and Data System) to facilitate differentiation between benign and malignant ovarian tumors.15 It relies on the sonographic nomenclature developed by the IOTA group, but it classifies tumors into 1 of 6 categories (O-RADS 0–5), from normal to high risk of malignancy. O-RADS also includes guidelines for the management of the findings. It should be noted that the O-RADS first model did not take into account the presence or absence of an acoustic shadow, although this has now been amended.

A description of the most recent common ultrasound scoring systems (SR, ADNEX, and O-RADS) is available in the Journal of Ultrasound in Medicine (JUM): Yoeli-Bik R, Lengyel E, Mills KA, Abramowicz JS. Ovarian masses: The value of acoustic shadowing on ultrasound examination. J Ultrasound Med 2023; 42:935–945.    

References

  1. https://www.cancer.org/cancer/types/ovarian-cancer/about/key-statistics.html
  2. Saunders et al. Risk of malignancy in sonographically confirmed septated cystic ovarian tumors. Gynecol Oncol 2010; 118:278–282.
  3. Valentin et al. Risk of malignancy in unilocular cysts: a study of 1148 adnexal masses classified as unilocular cysts at transvaginal ultrasound and review of the literature. Ultrasound Obstet Gynecol 2013; 41:80–89.
  4. Bourne et al. Transvaginal colour flow imaging: a possible new screening technique for ovarian cancer. BMJ 1989; 299:1367–370.
  5. Granberg S et al. Tumors in the lower pelvis as imaged by vaginal sonography. Gynecol Oncol 1990; 37: 224–229.
  6. Yamamoto Y, Yamada R, Oguri H, Maeda N, Fukaya T. Comparison of four malignancy risk indices in the preoperative evaluation of patients with pelvic masses. Eur J Obstet Gynecol Reprod Biol 2009; 144:163–167.
  7. Meys EM et al. Subjective assessment versus ultrasound models to diagnose ovarian cancer: A systematic review and meta-analysis. Eur J Cancer 2016; 58:17–29.
  8. Timmerman D, Van Calster B, Testa A, et al. Predicting the risk of malignancy in adnexal masses based on the simple rules from the international ovarian tumor analysis group. Am J Obstet Gynecol 2016; 214:424–437.
  9. Abramowicz JS, Timmerman D. Ovarian mass-differentiating benign from malignant: the value of the International Ovarian Tumor Analysis ultrasound rules. Am J Obstet Gynecol 2017; 217:652–660.
  10. Yoeli-Bik R, Longman RE, Wroblewski K, Weigert M, Abramowicz JS, Lengyel E. Diagnostic performance of ultrasonography-based risk models in differentiating between benign and malignant ovarian tumors in a US cohort. JAMA Netw Open 2023; 6:e2323289.
  11. Valentin L, Ameye L, Jurkovic D, et al. Which extrauterine pelvic masses are difficult to correctly classify as benign or malignant on the basis of ultrasound findings and is there a way of making a correct diagnosis? Ultrasound Obstet Gynecol 2006; 27:438–444.
  12. Yoeli-Bik R, Lengyel E, Mills KA, Abramowicz JS. Ovarian masses: The value of acoustic shadowing on ultrasound examination. J Ultrasound Med 2023; 42:935–945.
  13. Timmerman D, Testa AC, Bourne T, et al. Simple ultrasound-based rules for the diagnosis of ovarian cancer. Ultrasound Obstet Gynecol 2008; 31:681–90.
  14. Van Calster B, et al. Evaluating the risk of ovarian cancer before surgery using the ADNEX model to differentiate between benign, borderline, early and advanced stage invasive, and secondary metastatic tumours: prospective multicentre diagnostic study. BMJ 2014; 349:g5920.
  15. Andreotti RF, Timmerman D, Strachowski LM, et al. O-RADS US risk stratification and management system: a consensus guide-line from the ACR ovarian-adnexal reporting and data system committee. Radiology 2020; 294:168–185.

Appendix

Classification of primary ovarian tumors

  1. Ovulatory: functional or corpus luteum cyst; theca lutein cyst; polycystic ovary
  2. Infectious or inflammatory: tubo-ovarian abscess; hydrosalpinx
  3. Benign: serous or mucinous cystadenoma; endometrioma; mature cystic teratoma (most common primary benign tumor of the ovary); paraovarian/paratubal cysts
  4. Borderline: serous, mucinous
  5. Malignant
  6. Epithelial: high-grade serous carcinoma (HGSC; 70 to 80%); endometrioid carcinoma (10%); clear cell carcinomas (10%); mucinous carcinoma (3%); Low-grade serous carcinoma (LGSC; <5%); Brenner tumor; carcinosarcoma or malignant mixed müllerian tumor (MMMT); undifferentiated,
  7. Germ cell (20%): teratoma: immature, specialized teratomas of the ovary (struma ovarii, carcinoid tumor); dysgerminoma; yolk sac tumor: endodermal sinus tumor; embryonal carcinoma; choriocarcinoma: <1% of ovarian tumors; malignant mixed germ cell tumor
  8. Sex cord / stromal ovarian tumors (8–10%): fibrothecoma (fibroma, thecoma); Sertoli-Leydig cell tumor; granulosa cell tumor (juvenile or adult); small cell carcinoma

Jacques S. Abramowicz, MD, is a professor in the Department of Obstetrics and Gynecology at the University of Chicago.

Interested in learning more about gynecologic ultrasound? Check out the following posts from the Scan:

Medicine, Music, and Moonlighting

I love my day job as a gynecologic oncologist at Princess Margaret Cancer Centre in Toronto as well as my role as the clinical lead for Royal Victoria Regional Health Centre regional gynecologic cancer program in Barrie, Ontario. My work keeps me very busy as do my three beautiful daughters. With great friends and family, and some of the best support staff any doctor could ask for, I’ve achieved my goal of becoming a successful doctor and surgeon for women with cancer. But I’ve always had another dream tucked away.

Dodge 2I’ve always been musical – in fact at age 3 I started playing the accordion, which I’m pretty sure was bigger than I was! But I put my musical dreams on hold while I pursued a medical career. I learned to play piano, percussion, and brass, and dabbled with songwriting over the years but most of my time was devoted to my medical training at Western University and University of Toronto.

A few years ago a patient in the palliative care ward asked me to play for her. I brought in my piano and surprised her with an original song I’d prepared for her titled, “It’s So Hard to Say Goodbye.” It was an emotional afternoon and afterward she made me promise that I would pursue my love of music professionally. Well, two albums later, here I am working on my third with two very accomplished and talented songwriters, Steve Dorff (whose songs have been sung by legends Barbra Streisand, Celine Dion, and Whitney Houston, to name a few) and Paul Overstreet (who wrote the number-one hit “Forever and Ever, Amen” for Randy Travis).

Many people ask me how I find the time to be a doctor at two hospitals and a professional musician.

Sometimes after a challenging day at the hospital, it can be hard to do anything at all, let alone write and play music. But music never feels like a chore. It calms my spirit and brings me a sense of peace. I find that music has a unique healing power both for me and for people going through tough times, whether struggling with illness or other personal issues. I always say that my goal is to share my music with as many people as possible with the hope that it will bring to them the same sense of passion, peace, and fulfillment it has brought to my own life. Here are a few ways in which music helps to heal both patients and myself.

How Music Helps Patients

  1. Pain relief
    Overall, music does have positive effects on pain management. It can help reduce both the sensation and distress of chronic pain, postoperative pain, and a range of conditions, according to a paper in the Journal of Advanced Nursing.
  2. Immunity boost
    Music can boost the immune function. A comprehensive study on the neurochemistry of music explains that a particular type of music can create a positive and profound emotional experience, which leads to secretion of immune-boosting hormones as well as endorphins. Listening to music, dancing, or singing can also decrease levels of the stress-related hormone cortisol.
  3. Increase energy and fight fatigue
    Many of my patients sometimes suffer from fatigue due to treatment or the postoperative healing process. Losing themselves in music helps reduce physical and emotional stress and can chase negative emotions away. Musical distraction can also help with sleepless nights.

How Music Helps Me

  1. Staying positive
    Music improves my moods and creates a more positive state of mind that helps me through busy days and emotional times.
  2. Mental and physical workout
    Music helps with concentration and staying focused. In addition, playing the piano improves motor coordination and dexterity – very beneficial when I’m at the operating table.
  3. Calm and cool
    The medical field can be very high-stress and emotionally taxing. Going home and playing the piano or writing lyrics really helps me channel this energy in a positive way. And music has been shown to help lower heart rate and blood pressure, which is great for my long-term health.

How does music affect you? What activities help you escape? How do you balance the demands of the job with your personal interests? Comment below or let us know on Twitter: @AIUM_Ultrasound.

Jason Dodge, MD, Med, is a surgical oncologist at Princess Margaret Cancer Centre in Toronto. He participated in the AIUM International Consensus Conference on Adnexal Masses in 2014. You can check out his music on his website or on iTunes.

Record-setting OB Course

Last week, a record number of 444 physicians and sonographers gathered in Orlando, Florida, for the 38th Annual Advanced Ultrasound Seminar: OB/GYN. The program, which was co-directed by Lennard Greenbaum, MD, and Frederick Kremkau, MD, featured an impressive array of speakers, all of whom have been presidents (plus the incoming president-elect) of the AIUM.

Over thOB course 2015e course of 3 days, attendees heard from these experts on a wide variety of topics, including ovarian cancer screening, fetal malformations, endometriosis, fetal cardiac imaging, and adnexal masses. You can find the full schedule, plus a list of the faculty here.

By all accounts, this year’s event was a success. Here are just a few comments from attendees:

  • “I love this course. This is my 8th year attending and every year I take home a couple of real ‘pearls’ to assist me in improving the studies that I do in our office.”
  • “Overall excellent course – well organized, great venue/location, excellent lectures which are clinically relevant.”
  • “I have attended this conference several times in the past and always learn either a new technique or something very beneficial I can bring back and share to help improve patient care.”
  • “I’m really impressed with how clear and applicable this information was.”

And these comments played out in the survey results, as 64% said that this course was better than others they have attended and 97% said they would recommend this course to their colleagues.

The co-directors and AIUM are already hard at work planning next year’s course, which will be held February 18–20 at Walt Disney World’s Yacht and Beach Club Resorts. Keep an eye on The Scan and the AIUM website for details as they become available. And if you are interested, register as soon as it opens because 91% of this year’s attendees said they were very likely to attend another AIUM post-graduate course.

Did you attend this year’s event? If so, share your thoughts. Going next year? Let us know what you want to learn! Comment below or let us know on Twitter: @AIUM_Ultrasound.

Peter Magnuson is AIUM’s Director of Communications and Member Services.