Unselected Population Genetic Testing for Personalised Ovarian Cancer Risk Prediction: A Qualitative Study Using Semi-Structured Interviews
Abstract
:1. Introduction
2. Materials and Methods
2.1. PROMISE Feasibility Study Design
2.2. Qualitative Study Design
2.3. Data Analysis
3. Results
3.1. Participant Characteristics
3.2. Themes
3.2.1. Health Beliefs
ID-01: “… health is priority over everything because if I don’t have my health, there is no point me working or anything else…”
3.2.2. Decision Making
ID-04: “I think I’d probably already decided that I was keen to do it but obviously it’s useful to have the full information…”
ID-05: “…the questions were important because it made you think about certain things I suppose, which you might not have necessarily thought about”
ID-09: “It was reassuring that there was a real person I could talk to if I needed to”
ID-08: “I tend to absorb things better in writing and then you can go back and read over it again”
ID-07: “It probably would have been more difficult to find out that you were high risk but I never thought I would be, because of my knowledge of my own health…”
3.2.3. Influencing Factors Determining Acceptability
3.2.4. Effect of Results on Health and Well-Being
ID-03: “It was a relief”
ID-06: “They’ve said it’s low-risk and then one day in 10-years’ time, I could wake up and have all the signs of it [ovarian cancer] but ignore it and then it could be a problem”
3.2.5. Results Communication
3.2.6. Satisfaction
ID-02: “I guess if the worst thing were to happen and I was to develop ovarian-cancer, then I may think that test told me that I was so unlikely to get it and now here I am with it…”
ID-03: “I’d say it can potentially save your life”
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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ID | Age (Years) | Ethnicity | Marital Status | Employed | Parity | Lifetime Risk of OC (%) | Number of Relatives with OC | Number of Relatives with Non-Ovarian Cancers *** | Previous Genetic Test | Time from Results to Interview (Days) |
---|---|---|---|---|---|---|---|---|---|---|
01 | 47 | Caucasian | Married | No | 3 | 2.7 | 1 FDR | 4 | No | 117 |
02 | 44 | Southeast Asian | Cohabiting | Yes | 1 | 0.7 | 0 | 0 | No | 117 |
03 | 60 | Jewish | Married | Yes | 2 | 1.2 | 0 | 1 | No | 120 |
04 | 57 | Caucasian | Married | Yes | 2 | 1.5 | 1 FDR | 1 | No | 113 |
05 | 51 | Caucasian | Divorced | Yes | 2 | 0.6 | 0 | 0 | No | 110 |
06 | 69 | Caucasian | Married | No | 2 | 1.2 | 0 | 4 | No | 110 |
07 | 37 | Caucasian | Married | No | 3 | 1.0 | 0 | 2 | No | 116 |
08 | 33 | Southeast Asian | Single | Yes | 0 | 1.9 | 0 | 1 | No | 115 |
09 | 85 | Caucasian | Widowed | No | 0 | 0.6 * | 0 | 4 | Yes ** | 95 |
Facilitators | Quotes | Explanation |
---|---|---|
Social | ||
Altruism | “If I can help other people, I like to do that” (ID-06) | Individuals stated that altruism to help benefit other women in the future was a major motivator. |
Involvement in ovarian cancer research studies | “Having been through the UKCTOCS [30], I thought well I might as well go ahead with it” (ID-06) | Participants stated that because they had been part of another OC research study (i.e., UKCTOCS), it had motivated them to undergo PGT/risk stratification, as taking part in research studies for the benefit of the wider community had been a “lifelong passion”. |
Media publicity of cancers | “You hear now always the information coming out saying that one in three of us is going to have cancer at some point in life, but knowing that it might hit you at some point, so generally we’re thinking about the cancer, it’s out there all the time” (ID-07) | Widespread publicity from media campaigns on cancer-related issues positively influenced decision making as well as the media attention associated with Angelina Jolie undergoing BRCA testing. |
Encouragement from relatives and friends | “People do seem really to want to do it, well within my circle, people say without question, of course I would do it” (ID-06) | Encouragement from family/friends motivated individuals to undergo testing. |
Knowing someone who has had a genetic test | “I had had a conversation with her and she definitely recommended me to have the gene testing done” (ID-08) | Knowing someone who had undergone genetic testing and who had a positive experience influenced the decision of some participants. |
Demographic | ||
Ethnicity | “Also I am Jewish” (ID-03) | Being Jewish was a strong motivator to undergoing testing/risk stratification, as individuals were aware that they were more likely to be carriers for certain genetic diseases. |
Having children | “Mainly because of my sister and myself having two girls” (ID-03) | Individuals stated having children as a facilitator. This was rooted in the notion that if they were found to be at increased risk, then it could also affect their children as they could have inherited a genetic mutation. Therefore undergoing PGT/risk stratification themselves was beneficial to their children by proxy. |
Family history of ovarian cancer | “20 years ago my mother had ovarian cancer when she died and it was really, really bad and at the time, I asked if there was any testing and they said that there wasn’t and that I was at a high risk of having it, but that there was nothing that they could do at that time” (ID-01) | Interviewees felt that having an FH of OC was a motivator due to the distress they experienced in watching their relatives dying from OC. |
Family history of other cancers | “My two cousins died of breast cancer so I was quite interested” (ID-09) | Interviewees stated that an FH of other cancers was also a motivator, as it heightened awareness of cancer in general. |
Psychological | ||
Curiosity | “I was very interested actually because I did wonder if I had one of these cancer genes” (ID-09) | Individuals stated curiosity as an important reason, which was linked to the desire to stay healthy. |
Desire to stay healthy | “I’d rather be aware of what I’m predisposed to than not. Not that I would let it interfere with my day-to-day life but it’s more the fact that if I knew I had a predisposition then it would make me consider my lifestyle choices and change them to a beneficial way that although might not necessarily prevent it completely but it might improve my chances for it not to materialise” (ID-02) | Individuals expressed the need to learn as much as possible about their inherent genetic predispositions so that they had the opportunity to make better informed lifestyle choices to empower and give them greater control over their own health. |
Future feelings of regret if developed ovarian cancer and passed up the opportunity for genetic testing/risk assessment | “At the time, I sort of twisted it round, I did have a few should I shouldn’t I moments but I flipped it over, how would I feel in x number of years if something happened and I could have done something about it? So in the end, I felt better to proceed” (ID-05) | Individuals felt that if they were to forgo this opportunity and subsequently developed OC, they may regret not being tested. |
Ovarian cancer worry | “It was something that was always in the back of my mind” (ID-07) | Some cited OC worry as a facilitator, as they were seeking reassurance. |
Unknown family history | “I have no idea why people in my family have passed away, it was really important to see if there was a risk because you just hear that somebody’s passed away and you have no idea what they’ve passed away of, so I couldn’t even refer or anything to that family medical history” (ID-02) | For some individuals, not knowing their family’s medical history and causes of death, were strong motivators. This was because they saw undergoing PGT as a way of providing themselves with insights into the potential causes of death for their relatives which could benefit them and their children. |
Logistical | ||
Existing preventative measures | “I thought great, this must be a good thing, surely it’s better to know particularly with something like ovarian cancer, where you can do something about it, [and if I was found to be] high risk, I’d have been on my hands and knees begging you, to get them ovaries out” (ID-03) | The presence of established OC preventative measures to reduce risk encouraged individuals to undergo testing. |
Difficulty in the early detection of ovarian cancer | “I know about how it creeps up unaware and isn’t clear or obvious until quite often it’s too late” (ID-01) | The difficulty in detecting OC early, poor OC prognosis and the ease of undergoing PGT were motivators. |
Simplicity and ease of testing | “Well, it was a very simple test, a non-invasive test, well a blood test if you call that invasive but not really. But, yeah, it was a very simple test and I thought it all sounded pretty straightforward” (ID-08) | |
Barriers | Quotes | Explanation |
Social | ||
Stigma | “Any information where it can be used for positive gains, it can also be used for negative gains. So, I know there’s been some controversy about having genetic tests done, in case it affects insurance premiums etc. and again, being discriminated against in future employment, in case it’s something you’re asked to readily provide” (ID-04) | Interviewees felt that PGT had a stigma attached that was rooted in the notion that genetic results may be used against individuals by future employers and insurance companies. |
Change in family dynamics | “The thought did occur to me because there was a possibility that the results might come out saying that I have a high chance of developing ovarian cancer and I guess that would have had implications in the family, but I didn’t want to dwell on it too much without knowing if this was the case. But if it was the case, I knew there was a possibility where I would have to think ethically, do I need to inform other family members?” (ID-07) | Some participants felt that finding a mutation may alter family dynamics, and it could raise ethical dilemmas as to whether to inform relatives. |
Psychological | ||
Being a worrier | “I think it depends on how you see things really and how much of a worrier you are about your health” (ID-01) | Some cited “being a worrier” as a reason for not undergoing testing, as such individuals may not be able to cope mentally/emotionally with being told they had increased OC risk. |
Logistical | ||
Insurance implications | “I think the only thing that you might consider and be concerned about is if you did have a problem and you were wanting to get insurance or something, then would you have to declare [your results]” (ID-03) | Implications on insurance may serve as a barrier to undergoing testing, especially if in the future there was an obligation to divulge results to insurance companies. |
No known prevention | “If I was to learn you’ve got something where you can basically drop down dead, I wouldn’t want to know. I would only want to know if there was something you could do to reduce my risk” (ID-03) | Some cited no known preventative measures as a barrier. |
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Gaba, F.; Oxley, S.; Liu, X.; Yang, X.; Chandrasekaran, D.; Kalsi, J.; Antoniou, A.; Side, L.; Sanderson, S.; Waller, J.; et al. Unselected Population Genetic Testing for Personalised Ovarian Cancer Risk Prediction: A Qualitative Study Using Semi-Structured Interviews. Diagnostics 2022, 12, 1028. https://doi.org/10.3390/diagnostics12051028
Gaba F, Oxley S, Liu X, Yang X, Chandrasekaran D, Kalsi J, Antoniou A, Side L, Sanderson S, Waller J, et al. Unselected Population Genetic Testing for Personalised Ovarian Cancer Risk Prediction: A Qualitative Study Using Semi-Structured Interviews. Diagnostics. 2022; 12(5):1028. https://doi.org/10.3390/diagnostics12051028
Chicago/Turabian StyleGaba, Faiza, Samuel Oxley, Xinting Liu, Xin Yang, Dhivya Chandrasekaran, Jatinderpal Kalsi, Antonis Antoniou, Lucy Side, Saskia Sanderson, Jo Waller, and et al. 2022. "Unselected Population Genetic Testing for Personalised Ovarian Cancer Risk Prediction: A Qualitative Study Using Semi-Structured Interviews" Diagnostics 12, no. 5: 1028. https://doi.org/10.3390/diagnostics12051028
APA StyleGaba, F., Oxley, S., Liu, X., Yang, X., Chandrasekaran, D., Kalsi, J., Antoniou, A., Side, L., Sanderson, S., Waller, J., Ahmed, M., Wallace, A., Wallis, Y., Menon, U., Jacobs, I., Legood, R., Marks, D., & Manchanda, R. (2022). Unselected Population Genetic Testing for Personalised Ovarian Cancer Risk Prediction: A Qualitative Study Using Semi-Structured Interviews. Diagnostics, 12(5), 1028. https://doi.org/10.3390/diagnostics12051028