MyLynch: A Patient-Facing Clinical Decision Support Tool for Genetically-Guided Personalized Medicine in Lynch Syndrome
Abstract
:Simple Summary
Abstract
1. Introduction
- 1.
- Inform patients of their cancer risks, beyond just those cancers most classically associated with LS, using state-of-the-art risk prediction models in an easily understood format tailored for each patient and accessible to them in their home or at their clinician’s office [1].
- 2.
- 3.
- Improve risk communication between clinicians and patients while addressing resource limitations on medical providers and potential gaps between clinicians’ personal knowledge of gene-cancer associations and the rapidly developing and cutting-edge body of research on cancer genetics [6].
- 4.
- Aid in communication among relatives with the goal of increasing cascade testing and improving health outcomes among at-risk relatives [19].
2. Materials and Methods
2.1. Cancer Penetrance
2.2. Intervention Effect Estimates
2.3. Programming the Back-End
2.4. Iterative UI Design
3. Results
3.1. Baseline ACP Database
3.2. Intervention Effects and the Back-End
3.3. Results from the Focus Groups and Resulting Initial Prototype
3.4. Results from the Cognitive Interviews and Iterative UI Design
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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Notation | Interpretation |
---|---|
c | A cancer type where c is one of the cancer types listed in Table 2. |
The age of occurrence for cancer c. | |
is the genotype of gene j, where (MLH1, MSH2, MSH6, PMS2, EPCAM). g is a binary indicator of the presence of a PV in gene j. When a PV in gene j is present and when a PV in gene j is absent. | |
S is the sex where s can be either male or female. | |
R is the race where r is either All_Races, for individuals with an unknown race or who are mixed race; American Indian/Alaskan Native (AIAN); Asian/Pacific Islander (API); Black; or White. | |
E is the ethnicity where e is either All_Ethnicities, for individuals with an unknown ethnicity or a mix of Hispanic and non-Hispanic ethnicity; Hispanic; or non-Hispanic. | |
The individual’s current age, in discrete units (e.g., years). | |
The age interval from the individual’s current age to some future age for which the cumulative risk is to be estimated and where . | |
The survival probability of living free from cancer c until the individual’s current age given genotype g for gene j, sex s, race r, and ethnicity e. | |
is a binary indicator of whether intervention type k was applied or not, where k is one of the interventions listed in Table 3. when the intervention k is applied and when it is not. | |
The effective RR for intervention k for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. | |
The effective OR for an intervention k for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. If the intervention has a binary application type (e.g., a patient either receives regular colonoscopies or not), then this is the reported OR from an intervention study. | |
is the absolute value of the change in the continuous variable v used to measure the application of intervention k (e.g., amount of change in body weight). is a dichotomous variable that indicates whether will have an increasing or decreasing effect on cancer risk based on the study finding for intervention k. if increases cancer risk and if decreases cancer risk. These variables are for use with interventions that are applied on a continuous scale only. | |
The reported OR for an intervention k, which is applied on a continuous scale measured by (e.g., change in body weight), for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. | |
The hazard rate for cancer c, at age a, given genotype g for gene j, sex s, race r, ethnicity e, with intervention k either applied or not applied. | |
The effective hazard ratio (HR) for an intervention k for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. If the intervention has a binary application type (e.g., a patient either adheres to an aspirin regimen or not) then this is the reported HR from an intervention study. | |
The reported hazard ratio (HR) for an intervention k, which is applied on a continuous scale measured by (e.g., change in BMI), for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. | |
The estimated proportion of patients in a study sample who adhered to intervention k for cancer c, at age a, given genotype g for gene j, sex s, race r, and ethnicity e. is the estimated proportion of patients who did not adhere to intervention k. |
Cancer Type | Gene with Pathogenic Variant | |||||
---|---|---|---|---|---|---|
MLH1 | MSH2 | MSH6 | PMS2 | EPCAM | ||
1 | Brain | Møller (2018) | Møller (2018) | Møller (2018) | ||
2 | CRC | Wang (2020) | Wang (2020) | Wang (2020) | ten Broeke (2015) | Kempers (2011) |
3 | Endometrial | Felton (2007) | Felton (2007) | Felton (2007) | ||
4 | Gastric | Dowty (2013) | Dowty (2013) | Møller (2018) | ||
5 | Ovarian | Engel (2012) | Engel (2012) | Møller (2018) | Engel (2012) | |
6 | Pancreatic | Møller (2018) | Dowty (2013) | |||
7 | Prostate | Dominguez-Valentin (2020) | ||||
8 | Small intestine | Engel (2012) | Engel (2012) | Engel (2012) | ||
9 | Urinary bladder | Møller (2018) | Møller (2018) | Møller (2018) |
Cancer Intervention | RR, OR, or HR Utilized | Reference | Genes Supported in the Study |
---|---|---|---|
CRC | |||
Colonoscopies | RR: 0.44 for screening every 3 years | Jarvinen (2020) | MLH1, MSH2 |
Aspirin Regimen | HR: 0.56 2 years after initiation HR: 0.63 5 years after initiation HR: 0.65 10 years after initiation all HR were for a 600MG dose/day | Burn (2020) | MLH1, MSH2, MSH6 |
Lower BMI | HR: decrease of 7% for each 1 point decrease of BMI | Movahedi (2015) | MLH1 |
Endometrial | |||
Weight Loss | OR: decrease of 20% for each 5kg in weight lost in overweight and obese patients | Trentham-Dietz (2006) | This study was of the general population and was not specific to LS patients. |
Prophylactic Hysterectomy | No occurrences of women with endometrial cancer after surgery; equivalent to RR = 0 | Schmeler (2006) | MLH1, MSH2, MSH6 |
Ovarian | |||
Prophylactic Oophorectomy | No occurrences of women with ovarian cancer after surgery; equivalent to RR = 0 | Schmeler (2006) | MLH1, MSH2, MSH6 |
Domain | Focus Group Summary |
---|---|
(1) Overall Suggestions |
|
(2) Priority Information |
|
(3) Visualization Preferences |
|
Interview Summaries by Domain | Representative Quotes | Related Features |
---|---|---|
Overall Impression | ||
Positive Feedback:
| “I was a little nervous of seeing this [website] before we started... but when you show it like this, it just makes me feel more relaxed and at ease” “I wish I had something like that when I was diagnosed” | |
Ease of Use and Clarify of Information | ||
Positive Feedback:
Addressed Concerns and Suggestions:
| “Looks so much better than the information that I got from the genetics center where I was diagnosed…” “It’s easy on the eyes, it’s easy on the language…. and it’s familiar” |
|
User Inputs | ||
Positive Feedback:
Addressed Concerns and Suggestions:
|
| |
Privacy | ||
Positive Feedback: Inclusion of disclaimer and terms/conditions Addressed Concerns and Suggestions:
|
| |
Risk Conveyance Table, Visualizations, and Aesthetics | ||
Positive Feedback:
Addressed Concerns and Suggestions:
| “I like that people who visualize data differently can choose” “I love that you put [cancer risk] into [terms of] 22 times more risk [than the average person] because a lot of the medical places will just say your lifetime risk and the average person’s lifetimes risk and then you have to kinda compare that... a lot of people who don’t have a background in statistics would understand [22 times more risk]” |
|
Interventions | ||
Positive Feedback:
Addressed Concerns and Suggestions:
| “If I take these things seriously, I can really reduce my risk” “…a colonoscopy is not pleasant, but if I can see that it would really make a difference, I would do it” “Something that you can use to understand the risk and understand how preventable some of these things can be” |
|
Sharing and the Report | ||
Positive Feedback:
Addressed Concerns and Suggestions: Make share buttons more visible and colorful | “My other three siblings… still have to be tested and two of them have children, and I think it is a helpful way to use it as an education material for people” |
|
Outside Resources | ||
Positive Feedback: Love inclusion of other places to get more information Addressed Concerns and Suggestions: Include links to additional information and resources on who to contact such as a genetic counselor |
|
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Knapp, S.T.; Revette, A.; Underhill-Blazey, M.; Stopfer, J.E.; Ukaegbu, C.I.; Poulin, C.; Parenteau, M.; Syngal, S.; Bae, E.; Bickmore, T.; et al. MyLynch: A Patient-Facing Clinical Decision Support Tool for Genetically-Guided Personalized Medicine in Lynch Syndrome. Cancers 2023, 15, 391. https://doi.org/10.3390/cancers15020391
Knapp ST, Revette A, Underhill-Blazey M, Stopfer JE, Ukaegbu CI, Poulin C, Parenteau M, Syngal S, Bae E, Bickmore T, et al. MyLynch: A Patient-Facing Clinical Decision Support Tool for Genetically-Guided Personalized Medicine in Lynch Syndrome. Cancers. 2023; 15(2):391. https://doi.org/10.3390/cancers15020391
Chicago/Turabian StyleKnapp, Stephen T., Anna Revette, Meghan Underhill-Blazey, Jill E. Stopfer, Chinedu I. Ukaegbu, Cole Poulin, Madison Parenteau, Sapna Syngal, Eunchan Bae, Timothy Bickmore, and et al. 2023. "MyLynch: A Patient-Facing Clinical Decision Support Tool for Genetically-Guided Personalized Medicine in Lynch Syndrome" Cancers 15, no. 2: 391. https://doi.org/10.3390/cancers15020391
APA StyleKnapp, S. T., Revette, A., Underhill-Blazey, M., Stopfer, J. E., Ukaegbu, C. I., Poulin, C., Parenteau, M., Syngal, S., Bae, E., Bickmore, T., Hampel, H., Idos, G. E., Parmigiani, G., Yurgelun, M. B., & Braun, D. (2023). MyLynch: A Patient-Facing Clinical Decision Support Tool for Genetically-Guided Personalized Medicine in Lynch Syndrome. Cancers, 15(2), 391. https://doi.org/10.3390/cancers15020391