When it comes to the general public and cancer patients, the usefulness of cancer statistics depends on how they are interpreted and used. It has been widely reported that the lifetime risk of developing breast cancer is 1 in 8— a frightening thought for women who misinterpret that statistic to mean that at any time, they have a 1 in 8 chance of having breast cancer. The actual chances of developing breast cancer change throughout a woman’s life, so that a 20-year-old woman has a current risk of only 1 in 2,500 of developing the disease within the next 10 years, and a 50-year-old woman has a current risk of about 1 in 39. Heredity, ethnicity, reproductive history, lifestyle factors and other risk factors all contribute to an individual’s risk. So cancer statistics are useful when used for broad perspective but not for individual application.
The following definitions are provided to help you make sense of the sometimes confusing statistical terminology used when discussing cancer and its outcomes. Incidence describes the number of new cases of cancer developed by a specific population group within a set period of time—usually one year. For example, the total 2000 incidence of testicular cancer will be about 6,900 men. Incidence rate is the number of new cases in a population. The incidence is usually expressed in terms of the number of cases per 100,000 people. For example, the incidence rate for testicular cancer in the United States is approximately 3 new cases per 100,000 men, often stated simply as 3 per 100,000.
Prevalence is the total number of people with cancer or with a particular risk factor for cancer at a particular moment in time in the entire population. For large groups of people, prevalence is estimated by collecting information from a smaller subset of people and then extrapolating that information to the general population. For example, by collecting DNA information from breast cancer patients, scientists have estimated that the prevalence of the BRCA-1 gene in the total population is between 0.04 percent and 0.2 percent, meaning that much less than 1 percent of the total population has this breast cancer susceptibility gene.
Morbidity is a state of illness; i.e., it is often said that smoking is a major cause of morbidity in the U.S.
Mortality means pertaining to death.
Mortality rate is the number of people in a population group who die of cancer within a set period of time, usually one year. Cancer mortality rate is usually expressed in terms of deaths per 100,000 people. For example, the mortality rate for stomach cancer in the U.S. in 1930 was 28 (28 deaths per 100,000 people), but dropped to 4 by 1992, meaning that only 4 people out of every 100,000 in the U.S. died of stomach cancer in 1992.
Prognosis is the prediction or estimation of the course and outcome of the disease, usually including the chances for recovery. While physicians may base a prognosis on statistical precedents, each individual is different, with actual outcomes affected by many factors, including the patient’s age and general health, the type and stage of cancer, and the effectiveness of the particular treatment used. Therefore, while a prognosis may be helpful for explaining the seriousness of a disorder or for guiding treatment decisions, it cannot be used to predict disease outcomes for an individual.
Survival rate is the measure of the number of people who develop cancer and survive over a period of time. Scientists commonly use five-year survival as the standard statistical basis for defining when a cancer has been successfully treated.
The 5-year survival rate includes anyone who is living five years after a cancer diagnosis including those who are cured, those in remission, and those who still have cancer and are undergoing treatment. For example, when colorectal cancers are detected early, the 5-year survival rate is 92 percent, meaning that 92 percent of all colorectal cancer patients live at least 5 years after diagnosis if the cancer is detected early.
The "overall" 5-year survival rates measure everyone who has ever been diagnosed with a particular cancer equally, which may lead to distorted statistics. For example, a 90-year-old man and a 30-year-old man who have the same cancer will be grouped together. The 90-year-old may die of other causes within the five-year period due to normal life expectancy, and this can skew the data. A more statistically accurate view of survival is the "relative" 5-year survival rate, which compares cancer patients’ survival rate with the survival rate of the general population, taking into account differences in age, gender, race and other factors. In this case, the 30-year-old and the 90-year-old would be treated as statistically different.
Risk refers to the chance that an individual will contract a disease. High-risk is when the chance of developing cancer is greater than the chance for the general population. For example, people who smoke have a high risk of developing lung cancer compared with people who don’t smoke.
Risk factor is anything that has been identified as increasing a person’s chance of getting a disease. These can be controllable or uncontrollable, personal or environmental. For example, risk factors for developing colon cancer include having a hereditary predisposition to the disease (uncontrollable) and eating a high-fat, low-fiber diet (controllable).
Relative risk is a measure of how much a particular risk factor increases the risk of development of a specific cancer. For example, the risk for developing ovarian cancer increases by 300 percent for a woman with a close family history of the disease compared to a woman without a family history. In this example, the relative risk of developing ovarian cancer is 3 for those with a family history, meaning they have 3 times the risk.
Attributable risk is a measure of how much of the total incidence of disease is caused by that risk factor. For example, even thought the relative risk of developing breast cancer for a woman with the BRCA-1 gene is high, since the prevalence I of the BRCA-1 gene is low, most cases of breast cancer are not caused by the BRCA-1 gene.
Lifetime risk is the probability of
developing or dying of cancer sometime during one’s lifetime. A person has a
lifetime risk of 2 in 5 of developing cancer, meaning that for every five people
in the population, two will eventually develop cancer. The lifetime risk of
dying of cancer in 1 in 5.
Last updated May 05, 2000