Literature DB >> 17384773

Inferring past pesticide exposures: a matrix of individual active ingredients in home and garden pesticides used in past decades.

Joanne S Colt1, Mancer J Cyr, Shelia H Zahm, Geoffrey S Tobias, Patricia Hartge.   

Abstract

BACKGROUND: In retrospective studies of the health effects of home and garden pesticides, self-reported information typically forms the basis for exposure assessment. Study participants generally find it easier to remember the types of pests treated than the specific pesticides used. However, if the goal of the study is to assess disease risk from specific chemicals, the investigator must be able to link the pest type treated with specific chemicals or products.
OBJECTIVES: Our goal was to develop a "pesticide-exposure matrix" that would list active ingredients on the market for treating different types of pests in past years, and provide an estimate of the probability that each active ingredient was used.
METHODS: We used several different methods for deriving the active ingredient lists and estimating the probabilities. These methods are described in this article, along with a sample calculation and data sources for each.
RESULTS: The pesticide-exposure matrix lists active ingredients and their probabilities of use for 96 distinct scenarios defined by year (1976, 1980, 1990, 2000), applicator type (consumer, professional), and pest type (12 categories). Calculations and data sources for all 96 scenarios are provided online.
CONCLUSIONS: Although we are confident that the active ingredient lists are reasonably accurate for most scenarios, we acknowledge possible sources of error in the probability estimates. Despite these limitations, the pesticide-exposure matrix should provide valuable information to researchers interested in the chronic health effects of residential pesticide exposure.

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Year:  2006        PMID: 17384773      PMCID: PMC1817710          DOI: 10.1289/ehp.9538

Source DB:  PubMed          Journal:  Environ Health Perspect        ISSN: 0091-6765            Impact factor:   9.031


Retrospective studies of the health effects of home and garden pesticides face challenges in exposure assessment, particularly for diseases with long latency periods where the relevant exposures may have occurred decades before diagnosis. Typically, self-reported information forms the basis for exposure assessment, sometimes supplemented with inventories of stored pesticide products or measurements of pesticide residues in environmental or biologic samples. Study participants have had difficulty recalling specific brand or chemical names of pesticides they have used (Bradman et al. 1997; Daniels et al. 2001; Pogoda and Preston-Martin 1997). Teitelbaum (2002) suggested that people can more easily remember the types of pests treated, as was observed in a study of childhood neuroblastoma (Daniels et al. 2001). If this approach is used, and if the goal is to assess disease risk from specific chemical exposures, the investigator must be able to link the type of pest treated with specific chemicals. We have developed a “pesticide–exposure matrix” to assist in that task. The matrix is designed to be used in conjunction with self-reported information on the types of pests treated in 4 years: 1976, 1980, 1990, and 2000. For each pest–year combination, the matrix lists the active ingredients that were on the market and provides a rough estimate of the probability that a product containing each ingredient was used. For example, if a consumer treated his or her home for rodents in 1990, we estimate that there is an 87% probability that the product contained brodi-facoum, a 10% probability for warfarin, and a 3% probability for other, unspecified active ingredients. The probabilities sum to > 100% when a product contains more than one active ingredient (e.g., if only one product was available and it contained three ingredients, the probability of use would be 100% for each). The probabilities are unrelated to the concentrations of the active ingredients in the product and are therefore unrelated to the intensity of exposure. We developed the matrix for a population-based case–control study of non-Hodgkin lymphoma (NHL) conducted between July 1988 and June 2000 (Hartge et al. 2005). Participants completed a lifetime residential history calendar and were later interviewed. Starting with the current home, interviewers asked whether pesticides were used to treat each of 12 pest types: lawn insects, lawn weeds, outdoor plant/tree insects, outdoor plant/tree weeds, outdoor plant/tree diseases, crawling insects, flying insects, termites, fleas/ticks on pets, fleas/ticks in the home, insects on indoor plants, and rodents. As the interviewer asked about each pest type, he or she displayed a card with examples of specific pests. The interviewer asked who applied the pesticide (respondent, exterminator, someone else), how frequently, and in what form (e.g., spray, powder). This was repeated for each home in which the subject lived for at least two years, going back 30 years. The questionnaire and cards can be found at http://dceg.cancer.gov/modules/PesticideHist.pdf [National Cancer Institute (NCI) 2006a]. The pesticide–exposure matrix covers each of the 12 pest types in the NHL study. Probability estimates are provided for 4 years (1976, 1980, 1990, and 2000) and two types of appliers (consumers, using pesticides purchased at supermarkets and hardware stores; and professionals such as pest control operators and lawn services). Thus, 96 “scenarios” (12 pest types × 4 years × 2 appliers) are covered. The matrix does not cover synergists [chemicals added to products to increase potency, such as N-octyl bicycloheptene dicarboximide (MGK 264) and piperonyl butoxide], repellents [e.g., DEET (diethyl-toluamide)], solvents, emulsifiers, spreaders, stickers, buffering agents, or other ingredients that are not considered active ingredients but must be listed on the label.

Data Sources

Reports prepared by Kline & Company, Inc. (Little Falls, NJ) (Anonymous 1982, 1991; Cyr and Dansbury 2000; Fugate and Cyr 1997; Fugate and Hall 2002; Fugate et al. 2000, 2001, 2002; Garushenko et al. 1977; Goodbread et al. 1983; Hall and Dansbury 2000; Hodge and Rafter 1991, 1992a, 1992b; Ramsey and Kollonitsch 1977) were the major information source. Since 1976, Kline has conducted proprietary analyses of product sales, market share, and active ingredient sales of home and garden pesticides and fertilizers for both the consumer and professional markets. All major pesticide manufacturers in the United States are purchasers of these reports. The data are used for market planning purposes in developing business strategies focused on the consumer and professional markets. The types of information presented in the reports vary, depending on the type of market (consumer vs. professional), the pest type, and the year (data have become more detailed over time). Data may be provided on the number of acres treated nationwide with individual products, pounds of specific active ingredients used, dollar sales of products or active ingredients, prices per pound of product, dollar sales by company, and/or main products by company. Kline derived information for the consumer markets by analyzing sales and other data obtained primarily through telephone interviews with pesticide manufacturers or formulators. Depending on the year, interviews were held with 60–75 of 85–100 manufacturers or formulators. The accuracy of the information varies with the cooperativeness of the respondents and their knowledge of the product categories, but generally increases with the size of the market. Data on market size are believed to be within 10% of the true value for product categories with sales of $500 million or more and within 25% of the true value for smaller product categories. Data for professional markets were gathered through telephone interviews with professional pesticide applicators. This market is large, highly segmented, and diffuse. Typically, 200–300 applicator companies (or branches of major chains) were interviewed in each lawn or outdoor plant/tree segment, of a universe of 15,000–18,000, and 200–800 applicator companies were interviewed in the termite, crawling insect, and flying insect segments, of a universe of about 20,000. Data accuracy varies with the cooperativeness of the respondents, their knowledge of different product categories, the number of interviews, and end user and supplier concentration in each market segment. Two U.S. Environmental Protection Agency (EPA) databases were used. The Pesticide Product Information System (PPIS) (U.S. EPA 2003a) contains information on pesticide products that have been registered in the United States, including registrant names and addresses, ingredients, toxicity category, product names, distributor brand names, site uses, pest uses, pesticidal type, formulation code, and registration status. A related resource is U.S. EPA’s Pesticide Product Label System (PPLS) (U.S. EPA 2003b), a collection of pesticide label images. We used these databases to estimate probabilities for consumer treatment of crawling insects, flying insects, fleas/ticks on pets, and fleas/ticks in the home, and to provide information on product formulations and application rates. Another information source, the U.S. EPA National Home and Garden Pesticide Use Survey (Whitmore et al. 1992) (the “U.S. EPA Survey”), involved home interviews with > 2,000 households in 1990. Interviewers inventoried stored pesticide products, recorded the active ingredients on the label, and asked respondents to identify the pests on which the product had been used during the preceding year. The survey covered continuous-use products (e.g., flea/tick collars, roach/ant traps) only in a general way, and did not cover professionally applied products. Because the survey accounted only for products in storage, it likely underestimated the prevalence of products that are typically discarded after a single use (e.g., foggers). We used information from this survey as input to the probability estimates for consumer treatment of crawling and flying insects. Several other sources were used to help identify active ingredients in products and to estimate application rates: C&P Press publications (Anonymous 1994, 1995; C&P Press 2004), Meister Publishing Company manuals (Anonymous 1999a,1999b, 2000, 2003, 2005), Crop Data Management Systems, Inc. (2004), and Hagan et al. (1993).

Methods for Estimating Probabilities and Confidence Levels

We used several different methods to estimate the probabilities. Our choice of a method for each scenario was based on the types and quality of information available. Professional judgment (M.J.C., Senior Associate, Specialty Pesticides, Kline & Company, Inc.) played a large role in many scenarios. Wherever possible, we tied the probabilities to Kline-reported information on the number or percent of acres, nationwide, that were treated with specific products or active ingredients. That is, if Kline reported that half of all lawn acres treated for weeds by professionals was treated with active ingredient X, we assumed that if a person hired a professional to treat his or her lawn for weeds, there is a 50% chance that the applicator used a product containing X. If acreage was not provided by Kline, we attempted to derive it; otherwise, we based the probabilities on dollar sales. The probabilities were never based strictly on the pounds used, which can be a poor indicator of the probability of use; this is illustrated in Table 1, comparing two leading products used by professionals to treat for lawn insects in 2000. The pounds data erroneously suggest that Dursban (containing chlorpyrifos) was much more widely used than Talstar (containing bifenthrin), whereas the sales and acres data show that use was somewhat similar. This is because the bifenthrin molecule is more active than chlorpyrifos, and although the products sell for a similar price per acre, bifenthrin is less concentrated then chlorpyrifos in the formulated product. Overall, acreage treated probably provides the best basis for calculating probabilities because it accounts for differences in concentrations and usage rates among different classes of pesticides. We consider dollar sales to be acceptable if it is the only information available.
Table 1

Comparison of two leading products used by professional applicators to treat lawns for insects in 2000.

BrandActive ingredientChemical familySales (US$)Acres treatedActive ingredient (lb)
TalstarBifenthrinPyrethroid10 million276,00031,000
DursbanChlorpyrifosOrganophosphate8 million289,000309,000

Data from Fugate et al. (2001).

Our level of confidence in the probability estimates varies by scenario, depending on the method used, the extent to which judgment played a role, the quality of the data in the source materials (we occasionally judged the source data to be of poor quality and made modifications based on professional expertise), and how closely the pest type definition in the Kline reports matched that in the NHL questionnaire. Our confidence level is higher for scenarios in which one supplier or active ingredient dominated the market. The methods used, the scenarios to which each applies, and the confidence ratings are summarized in Table 2 and discussed below. A sample calculation is provided for each (Tables 3–9). Calculations and data sources for all 96 scenarios are provided online at http://dceg.cancer.gov/pesticide (NCI 2006b).
Table 2

Methods used to estimate probabilities of use of specific pesticide active ingredients, and level of confidence in probability estimates.

ScenarioPest/applier/yearMethodaConfidence level
1Lawn weeds, consumer, 19765Low
2Lawn weeds, consumer, 19802Medium
3Lawn weeds, consumer, 19902Medium
4Lawn weeds, consumer, 20002Medium
5Lawn insects, consumer, 19767Low
6Lawn insects, consumer, 19802Medium
7Lawn insects, consumer, 19902Medium
8Lawn insects, consumer, 20002Medium
9Outdoor plant and tree weeds, consumer, 19765Low
10Outdoor plant and tree weeds, consumer, 19805Medium
11Outdoor plant and tree weeds, consumer, 19903Medium
12Outdoor plant and tree weeds, consumer, 20003Medium
13Outdoor plant and tree insects, consumer, 19767Low
14Outdoor plant and tree insects, consumer, 19802Medium
15Outdoor plant and tree insects, consumer, 19902Medium
16Outdoor plant and tree insects, consumer, 20002Medium
17Outdoor plant and tree diseases, consumer, 19767Low
18Outdoor plant and tree diseases, consumer, 19802Medium
19Outdoor plant and tree diseases, consumer, 19902Medium
20Outdoor plant and tree diseases, consumer, 20002Medium
21Indoor plants, consumer, 19767Low
22Indoor plants, consumer, 19805Medium
23Indoor plants, consumer, 19905Medium
24Indoor plants, consumer, 20008
25Crawling insects, consumer, 19766Medium
26Crawling insects, consumer, 19806Medium
27Crawling insects, consumer, 19906Medium
28Crawling insects, consumer, 20006Medium
29Flying insects, consumer, 19766Medium
30Flying insects, consumer, 19806Medium
31Flying insects, consumer, 19906Medium
32Flying insects, consumer, 20006Medium
33Fleas/ticks on pets, consumer, 19766Medium
34Fleas/ticks on pets, consumer, 19806Medium
35Fleas/ticks on pets, consumer, 19906Medium
36Fleas/ticks on pets, consumer, 20006Medium
37Fleas/ticks in home, consumer, 19766Medium
38Fleas/ticks in home, consumer, 19806Medium
39Fleas/ticks in home, consumer, 19906Medium
40Fleas/ticks in home, consumer, 20006Medium
41Termites, consumer, 19769
42Termites, consumer, 19809
43Termites, consumer, 19909
44Termites, consumer, 20009
45Rodents, consumer, 19764High
46Rodents, consumer, 19804High
47Rodents, consumer, 19904High
48Rodents, consumer, 20004High
49Lawn weeds, professional, 19764Medium
50Lawn weeds, professional, 19804Medium
51Lawn weeds, professional, 19901High
52Lawn weeds, professional, 20001High
53Lawn insects, professional, 19764Medium
54Lawn insects, professional, 19804Medium
55Lawn insects, professional, 19901High
56Lawn insects, professional, 20001High
57Outdoor plant and tree weeds, professional, 19764Medium
58Outdoor plant and tree weeds, professional, 19804Medium
59Outdoor plant and tree weeds, professional, 19901High
60Outdoor plant and tree weeds, professional, 20001High
61Outdoor plant and tree insects, professional, 19764Low
62Outdoor plant and tree insects, professional, 19804Low
63Outdoor plant and tree insects, professional, 19901Medium
64Outdoor plant and tree insects, professional, 20001Medium
65Outdoor plant and tree diseases, professional, 19764Medium
66Outdoor plant and tree diseases, professional, 19804Medium
67Outdoor plant and tree diseases, professional, 19907Low
68Outdoor plant and tree diseases, professional, 20001High
69Indoor plants, professional, 19769
70Indoor plants, professional, 19809
71Indoor plants, professional, 19909
72Indoor plants, professional, 20009
73Crawling insects, professional, 19764Medium
74Crawling insects, professional, 19804Medium
75Crawling insects, professional, 19904Medium
76Crawling insects, professional, 20004Medium
77Flying insects, professional, 19768
78Flying insects, professional, 19808
79Flying insects, professional, 19908
80Flying insects, professional, 20004Low
81Fleas/ticks on pets, professional, 19766Medium
82Fleas/ticks on pets, professional, 19806Medium
83Fleas/ticks on pets, professional, 19906Medium
84Fleas/ticks on pets, professional, 20006Medium
85Fleas/ticks in home, professional, 19768
86Fleas/ticks in home, professional, 19808
87Fleas/ticks in home, professional, 19908
88Fleas/ticks in home, professional, 20004Medium
89Termites, professional, 19764Medium
90Termites, professional, 19804Medium
91Termites, professional, 19904High
92Termites, professional, 20004High
93Rodents, professional, 19764High
94Rodents, professional, 19804High
95Rodents, professional, 19904High
96Rodents, professional, 20004High

Probabilities were not estimated for these scenarios.

1 = number of acres treated; 2 = number of acres treated, derived from pounds of active ingredients and application rates; 3 = number of acres treated, derived from dollar sales, unit prices, and application rates; 4 = product sales; 5 = product sales, calculated from company sales; 6 = active ingredient frequencies from PPIS (U.S. EPA 2003a); 7 = professional judgment based on descriptive data; 8 = active ingredients listed, probabilities not estimated; 9 = no active ingredients listed or probabilities estimated.

Table 3

Example of method 1: professional treatment of outdoor plant/tree insects, 1990 (scenario 63).

ProductaActive ingredientAcres treatedaProbability of use [% (calculated)]b
MalathionMalathion90,00031
DursbanChlorpyrifos47,00016
DiazinonDiazinon32,00011
SevinCarbaryl11,0004
OrtheneAcephate10,0003
OftenolIsofenphos9,0003
OtherOther96,00033
Total295,000

Anonymous (1991).

Acres treated with each active ingredient divided by total acres treated.

Table 9

Example of method 7: consumer treatment of outdoor plant/tree diseases, 1976 (scenario 17).

Active ingredientProbability (%)a
Captan20
Folpet20
Sulfur20
Chlorothalonil15
Maneb10
Zineb5
Thiram5
Ferbam5

According to Kline (Ramsey and Kollonitsch 1977), Ortho was the largest manufacturer in this segment, with a 33% market share. Ortho’s main active ingredients were captan, folpet, and sulfur, which were used by other manufacturers as well. Other active ingredients listed by Ramsey and Kollonitsch (1977), and most likely used by both Ortho and other manufacturers, were chlorothalonil, maneb, zineb, thiram, and ferbam. Based on this information, we used judgment to derive the probabilities.

Method 1: number of acres treated

This method was used when the Kline reports provided the number of acres nationwide treated with specific pesticide products (scenarios 51, 52, 55, 56, 59, 60, 63, 64, and 68, all of which involve professional treatment of lawns or outdoor plants/trees). We assumed that the probability that a product (and each active ingredient in it) was used is equal to the percent of acres treated with that product. We have a medium confidence level in the estimates for outdoor plant/tree insects (1990 (2000) and a high confidence level for the others, because the Kline data for outdoor plants do not include mature trees, which are often sprayed with insecticides by professional applicators. This use might be significant but is likely smaller than the market for insecticides applied to gardens and landscaping areas, on which the Kline estimates are based. We do not believe this to be an important limitation for outdoor plant/tree pests other than insects.

Method 2: number of acres treated (derived from pounds of active ingredients and application rates)

This method was used for lawns and outdoor plants/trees when Kline reported the pounds of individual active ingredients sold (scenarios 2–4, 6–8, 14–16, 18–20). We divided the pounds of each active ingredient by an estimated application rate (pounds per acre) to derive the number of acres treated with each active ingredient, and then proceeded as in method 1. The application rates were taken from Meister Publishing Company manuals (Anonymous 1999a, 1999b, 2000, 2003, 2005), C&P Press publications (Anonymous 1994, 1995; C&P Press 2004), and the PPLS (U.S. EPA 2003b). If the rates were presented as a range, we chose the midpoint unless we had reason to believe otherwise. Judgment was used for all of these scenarios, and we have a medium level of confidence in the probability estimates. For lawn weeds (1980, 1990, 2000), we modified the Kline-reported pounds of some active ingredients to reflect our judgment about actual product formulations. For lawn and outdoor plant/tree insects (1980, 1990, 2000), Kline provided the active ingredient pounds aggregated across three pest types (lawn insects, outdoor plant insects, and nonplant insects), requiring us to allocate the pounds to each individual pest type. A similar situation was encountered for outdoor plant/tree diseases (1980, 1990, 2000).

Method 3: number of acres treated (derived from dollar sales, unit prices, and application rates)

This approach was used when Kline reported both dollar sales and unit prices (dollars per pound or gallon) for individual products (scenarios 11 and 12). We divided the dollar sales by the unit price to estimate the pounds or gallons of each product sold. We then divided the pounds or gallons sold by an estimated application rate (pounds or gallons per acre) to derive the number of outdoor plant/tree acres treated with each product, and proceeded as in method 1. We have a medium level of confidence in the estimates.

Method 4: product sales

For scenarios 45–50, 53–54, 57–58, 61–62, 65–66, 73–76, 80, and 88–96, Kline reported dollar sales for individual products or active ingredients, but not unit prices. We assumed that the probability that a product (and each active ingredient in it) was used is equal to the product’s proportion of total dollar sales. For 1976, Kline treated two of the NHL pest types as one (professional treatment of lawn insects and outdoor plant/tree insects were combined, as were lawn weeds and outdoor plant/tree weeds, and lawn diseases and outdoor plant/tree diseases). We allocated active ingredient sales to the individual pest types using judgment, guided by information from the Kline reports. None of the Kline reports contained a category for professional treatment of “crawling insects” or “flying insects.” We used the following pest types reported by Kline to represent the crawling insect category: general pests in 1976 (these consist mainly of ants, roaches, and spiders), general pests and outdoor pests in 1980 (outdoor pests are mainly ants, roaches, and spiders treated outside, but not on the lawn or garden), and ants plus cockroaches in 1990 and 2000. Kline data on professional treatment of flying insects in 2000 pertained only to bees. Because of the uncertainty associated with using product sales as the basis for probability of use, we have a medium confidence level in the probabilities for most of these scenarios. We gave high confidence ratings to the 1990 and 2000 professional termite scenarios, the former because the market was well understood by Kline and the latter because of the large sample size used by Kline. The consumer rodent market was rated high because it has been dominated by d-Con (warfarin) during the entire period of interest, and the professional segment was high because it has used a small number of active ingredients in a well-documented market. Our confidence level is low for professional treatment of outdoor plant/tree insects in 1976 and 1980 because the Kline data excluded insecticide applications to mature trees, and because the 1976 data were aggregated across more than one pest type. We have low confidence in the probabilities for flying insects in 2000 because they were based only on bees.

Method 5: product sales (calculated from company sales)

For scenarios 1, 9, 10, 22, and 23, Kline reported dollar sales by manufacturer (but not by product or active ingredient) and identified each manufacturer’s main products and (typically) each product’s main active ingredients. Unit prices were not given. We identified the active ingredients in each product when necessary. We apportioned each manufacturer’s dollar sales to its individual products or active ingredients using judgment. We assumed that the probability that a product (and each active ingredient in it) was used is equal to the product’s percent of total dollar sales. For indoor plants in 1990, Kline reported sales by manufacturer and we used the PPIS (U.S. EPA 2003a) to identify the active ingredients that each manufacturer might have used. Probabilities for indoor plants pertain to insects only. Our confidence level is medium for all scenarios except lawn weeds (1976) and outdoor plant/tree weeds (1976), which are rated low because our allocation of sales to active ingredients required more judgment than the other scenarios.

Method 6: active ingredient frequencies from PPIS

For consumer treatment of household insects (scenarios 25–40), the Kline reports were not sufficiently detailed for our purposes. We used data from the PPIS (U.S. EPA 2003a) and the U.S. EPA Survey (Whitmore et al. 1992) to estimate the active ingredient probabilities. We first selected the PPIS “site” codes (places that the product was registered to be applied) and “pest” codes (pests that the product was registered to treat) to use for searching the database. For fleas/ticks on pets, we used site codes corresponding to pets, dogs, and cats, and pest codes for fleas, ticks, deer ticks, lonestar ticks, and brown dog ticks. For the remaining scenarios, we used the site codes listed under “household or domestic dwellings,” excluding codes that were not relevant (e.g., hotels, military barracks). For pest codes, we used cockroaches, ants, and spiders to represent crawling insects; and flies, mosquitoes, and bees to represent flying insects. We used these site and pest codes to search PPIS to identify all products that were actively registered for each pest type/year combination, excluding products that may be applied only by certified pest control operators, and the active ingredients in those products. We divided the number of products containing each active ingredient by the total number of products registered for that pest/year to derive the percent of products containing that active ingredient. We considered setting the probability for each active ingredient equal to the percent of products in which it was contained, but this could overstate probabilities for active ingredients present in a large number of products with relatively low sales, and vice versa. We therefore used judgment to modify the probabilities for some active ingredients. We used information from Kline and the U.S. EPA Survey (Whitmore et al. 1992) as the basis for most of the modifications, and judgment for the others. Although the U.S. EPA Survey data correspond to only 1 year (1990), we assumed that the adjustments that we derived from the data would, in most instances, apply to all 4 years of interest. The U.S. EPA Survey did not provide relevant information for fleas/ticks in the home. For fleas/ticks on pets in 2000, we also incorporated information from two Kline reports (Fugate and Cyr 1997; Fugate et al. 2001), which cover newer flea and tick products sold by veterinarians to consumers. Four veterinary products based on four active ingredients comprised 62% of this market in 2000, with products sold through retail channels comprising the remainder. We used PPIS to characterize the retail market, but used judgment based on Kline data to estimate the active ingredient probabilities for veterinary products. The Kline reports do not cover professional treatment of fleas/ticks on pets (scenarios 81–84) because the users are typically pet grooming shops, kennels, or veterinarian offices. The products used are likely similar to those used by consumers, so we set the probabilities the same as for consumer products. We have a medium level of confidence in the probability estimates.

Method 7: professional judgment based on descriptive data

For scenarios 5, 13, 17, 21, and 67, probabilities were based mostly on judgment, sometimes with a small amount of quantitative and/or descriptive data from the Kline reports, the literature, and the PPLS (U.S. EPA 2003b). For indoor plants, the estimates pertain to treatment of insects only. Our confidence level is low.

Method 8: active ingredients listed, probabilities not estimated

Kline does not maintain data on scenarios 24, 77–79, and 85–87, and there was not enough information from other sources to support probability estimates. Therefore, we developed lists of likely active ingredients but did not estimate probabilities. The lists were based on information from the Kline reports, the PPLS (U.S. EPA 2003b), the literature, and judgment.

Method 9: no active ingredients listed or probabilities estimated

Consumer treatment of termites (scenarios 41–44) is not covered in the Kline reports. There is no evidence that a significant number of consumers purchased products to self-apply termiticides until the late 1990s, and the market remains extremely small. Indoor plants (scenarios 69–72) are rarely treated by professional applicators.

Discussion

We describe here a pesticide–exposure matrix to assist in the assessment of exposure to individual active ingredients used in residential pesticides in the past. When used in conjunction with self-reported information on the types of pests treated in the home and garden over time, the matrix can be used to identify the active ingredients that were on the market for that pest type, and to provide a rough estimate of the probability that specific active ingredients were used. Identifying which active ingredients a person likely used is a necessary step in exposure assessment. However, many factors that are not covered by the matrix are important determinants of a person’s level of exposure. The probabilities of use are unrelated to the concentrations of the active ingredients in the pesticide products and therefore cannot be used to infer the intensity of exposure, an important factor in assessing risk. Many other factors may influence exposure, such as the pesticide application method and location; whether the pesticide was applied by the subject or a third party; the chemical properties of the active ingredient; the presence of synergists in the product, which could affect uptake through the skin; and the use of personal protective equipment. The matrix does not address exposures from the diet, from pesticide applications at nearby homes or farms, or from community spraying programs. Although we are confident that the active ingredient lists are reasonably accurate for most scenarios, there are many possible sources of error in the probability estimates. First, the data presented in the Kline reports were based on interviews with pesticide manufacturers and formulators or professional applicators, and the accuracy of the information depends on the number of interviews, the representativeness of the sample, the knowledge and cooperativeness of the respondents, and the complexity of the market. Second, some types of data (e.g., acres treated) are better surrogates for probability of use than others (e.g., dollar sales). Probabilities based on the percent of registered products [from the PPIS (U.S. EPA 2003a)] likely overstate probabilities for active ingredients present in a large number of products with relatively low sales, and vice versa; we attempted to correct for this, when possible, using data from the U.S. EPA Survey (Whitmore et al. 1992), but these data cover only one point in time. Third, only qualitative information was available for some scenarios. In short, a considerable amount of professional judgment was used to derive the probabilities for many scenarios. Given the many sources of uncertainty, the probabilities should be viewed as rough estimates of the relative importance of different active ingredients in each scenario. Although we are unable to quantify the uncertainties in the probability estimates, we do provide a relative ranking of confidence levels. Of the 96 scenarios, we have a relatively high level of confidence in 17, a medium level in 54, and low confidence in 10 (mostly for 1976). For 7 scenarios, we listed the active ingredients but could not estimate probabilities. For eight scenarios we were unable to identify the active ingredients, but these scenarios are seldom encountered (homeowner treatment of termites and professional treatment of indoor plants). Other limitations of the matrix are that it does not cover many substances present in pesticide products, such as synergists and “inert” ingredients, which may have adverse health effects. It does not incorporate information on product form because the source materials were not sufficiently detailed. Because the source data were national in scope, the matrix does not account for regional variations in pesticide use patterns. For a small number of scenarios there is a large “other” category, reflecting the level of detail in the source materials. Finally, this overall approach for assessing past pesticide use is contingent on study participants’ recall of pests treated in past homes, the accuracy of which becomes more questionable as one goes further back in time. We know of no other source of published historical information on individual active ingredients in home and garden pesticides. Despite the noted limitations, the pesticide–exposure matrix should provide valuable information to epidemiologists and other researchers interested in the chronic health effects of residential pesticide exposure.
Table 4

Example of method 2: consumer treatment of lawn insects, 1980 (scenario 6).

Pounds applied to lawns, outdoor plants, and nonplantsa
Pounds applied to lawns, outdoor plants, and nonplantsb
Active ingredientaFertilizer/insecticide combination productsaInsecticide-only productsaLawnOutdoor plantsNonplantsApplication rate for lawns (lbs/acre)cLawn acres treated (calculated)dProbability of use for lawns [% (calculated)]e
Diazinon1,200,000800,0001,400,000480,0001203467,00063
Chlorpyrifos140,000110,000190,00044,00017295,00013
Carbaryl0,000650,00033,000520,00098311,0001
Malathion0,000400,00020,000320,00060210,0001
Other230,000590,000319,000413,000892159,00021
Total1,570,0002,550,0001,961,0001,777,000383742,000

Anonymous (1982).

Allocation of active ingredient pounds separately to lawns, outdoor plants, and nonplants was done as follows: fertilizer/insecticide combination products: 100% is applied to lawns (judgment). Insecticide-only products: 15% of the total is applied to lawns, 70% to outdoor plants, and 15% to nonplants (Anonymous 1982). The split of each active ingredient to lawns vs. outdoor plants vs. nonplants is based on judgment, using the following assumptions: diazinon: 25%–60%–15%, carbaryl and malathion: 5%–80%–15%, chlorpyrifos: 45%–40%–15%, other: 15%–70%–15%.

Meister Publishing Company manuals (Anonymous 1999a, 1999b, 2003).

Pounds applied to lawns divided by application rate for lawns.

Lawn acres treated with each active ingredient divided by total lawn acres treated.

Table 5

Example of method 3: consumer treatment of outdoor plant/tree weeds, 1990 (scenario 11).

Manufacturer/ productaSales (US$ million)aUnit price ($/gal)aGal used [million (calculated)]bApplication rate (gal/acre)cAcres treated [million (calculated)]dActive ingredientAcres treated [million (calculated)]eActive ingredientfAcres treated [million (calculated)]gProbability of use [%(calculated)]h
Monsanto90.0481.90.53.8Glyphosate3.8Glyphosate4.042
Chevron Ortho2,4-D2.223
 Kleenup7.0600.10.50.2Glyphosate0.2MCPP2.223
 Weed-b-Gone20.0320.60.41.62,4-D MCPP1.6 1.6Diquat Dacthal1.0 1.011 11
 Triox4.3240.20.50.4Prometon0.4Trifluralin1.010
Lebanon3.5180.20.21.0Trifluralin1.0Prometon0.44
VPG Fertilome2.1240.10.40.22,4-D MCPP0.2 0.2
Kmart2.0240.10.40.22,4-D MCPP0.2 0.2
Spectracide2.0240.10.40.22,4-D MCPP0.2 0.2
Other products16.5200.80.42.1Dacthal Diquat1.0 1.0
Total9.6

Abbreviations: 2,4-D, 2,4-dichlorophenoxyacetic acid; MCPP, mecoprop.

Hodge and Rafter (1992a).

Sales divided by unit price.

Meister Publishing Company manuals (Anonymous 1999a, 1999b, 2003), C&P Press publications (Anonymous 1994, 1995; C&P Press 2004).

Gallons used divided by application rate in gallons per acre.

Assigning each product’s acres treated to all of the active ingredients it contains.

Eliminating duplicates.

Combining active ingredient acres treated across all products in which it appears.

Dividing each active ingredient’s acres treated by the total number of acres treated.

Table 6

Example of method 4: professional treatment of fleas/ticks in the home, 2000 (scenario 88).

ProductaActive ingredientSales (US$)aActive ingredientbSales (US$)cProbability of use [% (calculated)]d
Archer IGRPyridine355,000Methoprene3,371,00026
CatalystPropetamphos2,528,000Propetamphos2,528,00019
Demand CSLambda-cyhalothrin393,000Permethrin1,296,00010
DemonCypermethrin163,000Chlorpyrifos1,083,0008
DiazinonDiazinon166,000Deltamethrin794,0006
Dragnet SFRPermethrin475,000Pyriproxifen550,0004
Dursban 50WChlorpyrifos425,000Bendiocarb486,0004
Dursban ProChlorpyrifos658,000Lambda-Cyhalothrin393,0003
Ficam WBendiocarb486,000Diazinon371,0003
FleePermethrin660,000Pyridine355,0003
LindaneLindane118,000Tralomethrin244,0002
Nylar IGRPyriproxifen134,000Cypermethrin163,0001
NylarLinalool118,000Cyfluthrin122,0001
Precor 2000Methoprene817,000Lindane118,0001
Precor IGRMethoprene2,189,000Linalool118,0001
Precor IGRMethoprene365,000Other1,094,0008
PreludePermethrin161,000
SagaTralomethrin244,000
SuspendDeltamethrin794,000
TempoCyfluthrin122,000
Ultracide aerosolPyriproxifen416,000
Diazinon 4EDiazinon205,000
OtherOther1,094,000
Total13,086,000

Fugate et al. (2000).

Eliminating duplicates.

Combining active ingredient sales across all products in which it appears.

Sales for each active ingredient divided by total sales.

Table 7

Example of method 5: consumer treatment of indoor plants (insects only), 1990 (scenario 23).

ManufactureraSales (US$)aActive ingredientbSales (US$)cActive ingredientdSales (US$)eProbability [%(calculated)]f
Safer1,344,000Fatty acids1,344,000Pyrethrins2,306,00032
Ortho (Chevron)1,000,000Acephate500,000Resmethrin2,050,00028
Resmethrin500,000Fatty acids1,706,00024
Hyponex (Scotts)800,000Pyrethrins800,000Phenothrin1,164,00016
Resmethrin800,000Allethrin1,144,00016
Dexol641,000Dysiston641,000Dysiston786,00011
SC Johnson RAID1,500,000Pyrethrins750,000Tetramethrin769,00011
Allethrin750,000Acephate645,0009
Tetramethrin375,000Permethrin145,0002
Resmethrin750,000Other290,0004
Phenothrin375,000
United1,183,000Pyrethrins394,000
Allethrin394,000
Tetramethrin394,000
Phenothrin789,000
Other746,000Fatty acids362,000
Pyrethrins362,000
Acephate145,000
Dysiston145,000
Permethrin145,000
Other290,000
Total7,214,000

Hodge and Rafter (1992a).

PPLS (U.S. EPA 2003b).

Assignment of dollar sales to individual active ingredients was based on the PPLS (U.S. EPA 2003b) and judgment.

Eliminating duplicates.

Combining active ingredient sales across all manufacturers that produce it.

Sales of each active ingredient divided by total sales.

Table 8

Example of method 6: consumer treatment of crawling insects, 2000 (scenario 28).

Active ingredientaNo. of productsaProbability [%(calculated)]bProbability [%(adjusted)]
Permethrin43617.117
Pyrethrins74629.315c
Chlorpyrifos32112.613
Allethrin2509.810
Propoxur803.19c
Diazinon2138.48
Tetramethrin1907.57
Hydramethylnon150.68d
Fipronil120.58d
Dichlorvos522.06c
Sulfluramid80.36e
Phenothrin1365.35
Resmethrin2138.44c
Boric acid893.53
Carbaryl803.13
Pyriproxifen702.73
Esfenvalerate682.73
Cyfluthrin562.22
Deltamethrin411.62
Fenvalerate401.62
Malathion391.52
Methoprene90.42e
Hydroprene80.32c
Prallethrin291.11
Cypermethrin281.11
Eugenol100.41e
Other1967.78
Total2,546

From analysis of PPIS (U.S. EPA 2003a) data. The numbers do not sum to the total number of products because many products contain more than one active ingredient.

Number of products containing each active ingredient divided by the total number of products.

We modified the probability based on information on treatment of cockroaches, ants, and spiders from the U.S. EPA Survey (Whitmore et al. 1992).

Based on information from Kline (Hall and Dansbury 2000; Fugate and Hall 2002) and judgment.

We modified the probability based on judgment.

  5 in total

1.  Questionnaire assessment of nonoccupational pesticide exposure in epidemiologic studies of cancer.

Authors:  Susan L Teitelbaum
Journal:  J Expo Anal Environ Epidemiol       Date:  2002-09

2.  Pesticide exposures to children from California's Central Valley: results of a pilot study.

Authors:  M A Bradman; M E Harnly; W Draper; S Seidel; S Teran; D Wakeham; R Neutra
Journal:  J Expo Anal Environ Epidemiol       Date:  1997 Apr-Jun

3.  Residential pesticide exposure and neuroblastoma.

Authors:  J L Daniels; A F Olshan; K Teschke; I Hertz-Picciotto; D A Savitz; J Blatt; M L Bondy; J P Neglia; B H Pollock; S L Cohn; A T Look; R C Seeger; R P Castleberry
Journal:  Epidemiology       Date:  2001-01       Impact factor: 4.822

Review 4.  Residential herbicide use and risk of non-Hodgkin lymphoma.

Authors:  Patricia Hartge; Joanne S Colt; Richard K Severson; James R Cerhan; Wendy Cozen; David Camann; Shelia Hoar Zahm; Scott Davis
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2005-04       Impact factor: 4.254

5.  Household pesticides and risk of pediatric brain tumors.

Authors:  J M Pogoda; S Preston-Martin
Journal:  Environ Health Perspect       Date:  1997-11       Impact factor: 9.031

  5 in total
  7 in total

1.  Organophosphate insecticide use and cancer incidence among spouses of pesticide applicators in the Agricultural Health Study.

Authors:  Catherine C Lerro; Stella Koutros; Gabriella Andreotti; Melissa C Friesen; Michael C Alavanja; Aaron Blair; Jane A Hoppin; Dale P Sandler; Jay H Lubin; Xiaomei Ma; Yawei Zhang; Laura E Beane Freeman
Journal:  Occup Environ Med       Date:  2015-07-06       Impact factor: 4.402

2.  Associations between self-reported pest treatments and pesticide concentrations in carpet dust.

Authors:  Nicole C Deziel; Joanne S Colt; Erin E Kent; Robert B Gunier; Peggy Reynolds; Benjamin Booth; Catherine Metayer; Mary H Ward
Journal:  Environ Health       Date:  2015-03-25       Impact factor: 5.984

3.  Self-reported pregnancy exposures and placental DNA methylation in the MARBLES prospective autism sibling study.

Authors:  Rebecca J Schmidt; Diane I Schroeder; Florence K Crary-Dooley; Jacqueline M Barkoski; Daniel J Tancredi; Cheryl K Walker; Sally Ozonoff; Irva Hertz-Picciotto; Janine M LaSalle
Journal:  Environ Epigenet       Date:  2016-12-01

4.  Characterization of residential pesticide use and chemical formulations through self-report and household inventory: the Northern California Childhood Leukemia study.

Authors:  Neela Guha; Mary H Ward; Robert Gunier; Joanne S Colt; C Suzanne Lea; Patricia A Buffler; Catherine Metayer
Journal:  Environ Health Perspect       Date:  2012-10-24       Impact factor: 9.031

5.  Studying the impact of early life exposures to pesticides on the risk of testicular germ cell tumors during adulthood (TESTIS project): study protocol.

Authors:  Rémi Béranger; Olivia Pérol; Louis Bujan; Elodie Faure; Jeffrey Blain; Charlotte Le Cornet; Aude Flechon; Barbara Charbotel; Thierry Philip; Joachim Schüz; Béatrice Fervers
Journal:  BMC Cancer       Date:  2014-08-04       Impact factor: 4.430

6.  Relative Contributions of Agricultural Drift, Para-Occupational, and Residential Use Exposure Pathways to House Dust Pesticide Concentrations: Meta-Regression of Published Data.

Authors:  Nicole C Deziel; Laura E Beane Freeman; Barry I Graubard; Rena R Jones; Jane A Hoppin; Kent Thomas; Cynthia J Hines; Aaron Blair; Dale P Sandler; Honglei Chen; Jay H Lubin; Gabriella Andreotti; Michael C R Alavanja; Melissa C Friesen
Journal:  Environ Health Perspect       Date:  2016-07-26       Impact factor: 9.031

7.  An algorithm for quantitatively estimating non-occupational pesticide exposure intensity for spouses in the Agricultural Health Study.

Authors:  Nicole C Deziel; Laura E Beane Freeman; Jane A Hoppin; Kent Thomas; Catherine C Lerro; Rena R Jones; Cynthia J Hines; Aaron Blair; Barry I Graubard; Jay H Lubin; Dale P Sandler; Honglei Chen; Gabriella Andreotti; Michael C Alavanja; Melissa C Friesen
Journal:  J Expo Sci Environ Epidemiol       Date:  2018-10-30       Impact factor: 5.563

  7 in total

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