| Risk Assessment Methods
There are several statistical models that are commonly used to determine a woman's risk of breast cancer. These models use data from large populations of women to estimate an individual woman's risk. Each tool has its own strengths and limitations.
Gail Risk Model
The Gail Risk Model is a computer program that uses your
family history and medical history to estimate your chances
of
developing breast cancer in the next five years. The Gail
Risk Model was developed by Dr. Mitchell Gail, a researcher
from the National Cancer Institute. Your Gail Risk Model
score can give you a general estimate of your risk.
The program was originally created in order to determine
which women were eligible to participate in the National
Surgical Adjuvant Breast and Bowel Project (NSABP) P-1 study.
This study examined whether tamoxifen reduced the incidence
of breast cancer in high-risk women. For the purposes of
this study, any woman with a 5-year Gail Risk Model score
of 1.7% or higher was considered high risk, and therefore,
was
eligible to participate.
What does a 1.7% score mean and how is it calculated? To
use the Gail Risk Model, the computer program asks for information
about a number of factors that could increase your risk.
These factors include:
- Current age
- Age of first menstrual period
- Number of breast biopsies and whether atypical hyperplasia
was found
- Age at first live birth
- Number of first-degree relatives with breast cancer
After this information is entered, the program calculates
your absolute personal risk of developing breast cancer within
a certain period of time. As an example, assume you wanted
to calculate
your risk within 5 years. If the program gave you a score
of 1.7%, it means you have a 1.7% chance of developing breast
cancer within the next five years.
There are a number of important limitations to the Gail
Risk Model. For example, the model does not take into account
the ages at which affected relatives were diagnosed with
breast cancer. Further, it excludes second-degree relatives
and any history of breast cancer on the father's side of
the family. As a result, the model can under-predict risk
in women who have one or more of these factors.
Generally, the Gail Risk Model has been found to over-predict
breast cancer risk among women age 35 to 61 who do not receive
annual mammograms. This is largely attributed to the fact
that the model was developed based on data from women receiving
annual mammograms, and is therefore most appropriately used
among this population of women. These limitations mean that
using the Gail Risk Model alone may not present a woman with
a thorough picture of her risk level.
Claus Model
The Claus Model focuses solely on family history to estimate
the probability that a woman will develop breast cancer.
Using this model requires providing information about first-degree
and second-degree relatives who have had breast cancer.
Unlike the Gail Risk Model, it factors in the ages at which
these relatives were diagnosed. It can also include breast
cancer history on the father's side of the family as well.
The Claus Model's main advantage is its expanded inclusion
of family history information. It is limited in that it can
be used only with women who have at least one first- or second-degree
relative with breast cancer. This assessment tool does not
take into account other risk factors such as the presence
of atypical hyperplasia, age of first menstrual period or
age of first live birth.
How Does the FirstCyte®
Breast Test fit in?
Like the Gail Risk Model or Claus Model, the FirstCyte Breast
Test can also provide information about a woman's risk of
breast cancer. The approaches are complementary, but very
different.
The Gail Risk Model and Claus Model use general statistics
from a large population of women to approximate an individual
woman's risk. In contrast, the FirstCyte Breast Test uses
individualized cellular information from a woman's breast
to indicate abnormal changes. Knowing whether abnormal cells
are present will help the patient and physician make decisions
on ways to reduce her risk.
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