OK Computer? A Time Analysis of Google Searches About Symptoms Research Article OK Computer? A Time Analysis of Google Searches About Symptoms Keith J. Petrie a, Kate MacKrill a, Connor Silvester a, Greg D. Gamble b, Nicola Dalbeth b, James W. Pennebaker c [a] Department of Psychological Medicine, University of Auckland, Auckland, New Zealand. [b] Department of Medicine, University of Auckland, Auckland, New Zealand. [c] Department of Psychology, University of Texas, Austin, TX, USA. Clinical Psychology in Europe, 2019, Vol. 1(2), Article 32774, https://doi.org/10.32872/cpe.v1i2.32774 Received: 2019-01-01 • Accepted: 2019-04-02 • Published (VoR): 2019-06-28 Handling Editor: Winfried Rief, Philipps-University of Marburg, Marburg, Germany Corresponding Author: Keith J. Petrie, Psychological Medicine, Faculty of Medical and Health Sciences, University of Auckland, Private Bag 92019, Auckland, New Zealand. E-mail: kj.petrie@auckland.ac.nz Abstract Background: Google searches are now a popular way for individuals to seek information about the significance of common symptoms and whether they should seek medical assistance. As analysis of search patterns may help understand the demand for medical care, we examined what times over a 24-hour period and on what days of the week people searched Google for information about common symptoms. Method: We analysed Google searches for symptoms in the United Kingdom during the week from July 30 to August 5, 2018 using Google Trends. We recorded the time points with the highest search volume for 50 common symptoms relative to other searches, and the day of the week with the highest search peak for each particular symptom. Results: All of the peak searches for the symptoms we examined occurred during the night between 10pm and 8am. The majority 32/50 (64%) occurred between 3am to 6am with 12/50 (24%) between midnight and 3am. Most symptom searches were more common during the week and lowest during the weekend. Typically, searches for a particular symptom peaked at a similar time each night over the week. Conclusions: Searches for symptoms are significantly more common during night-time hours, and particularly between 3 and 6am. Symptom searches show relatively stable diurnal and weekly patterns. Keywords Google searches, symptoms, health anxiety, internet, time of day This is an open access article distributed under the terms of the Creative Commons Attribution 4.0 International License, CC BY 4.0, which permits unrestricted use, distribution, and reproduction, provided the original work is properly cited. https://crossmark.crossref.org/dialog/?doi=10.32872/cpe.v1i2.32774&domain=pdf&date_stamp=2019-06-28 https://cpe.psychopen.eu/ https://www.psychopen.eu/ https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ Highlights • Google searches for health information are common and individuals regularly search for their specific symptoms before deciding whether to seek medical care. • Searches for common symptoms are significantly more likely to occur, relative to other searches, during the night-time hours and are highest during the working week and lowest at weekends. • The majority of symptom searches show relatively stable diurnal and weekly patterns. Experiencing physical symptoms is very common but it is often difficult for individuals to determine whether the symptom is serious and needs medical attention (Pennebaker, 1982; Petrie & Broadbent, 2019). A recent general population survey showed that individ‐ uals experience an average of five symptoms in a week, while 23% of the sample reported experiencing 10 or more symptoms (Petrie, Faasse, Crichton, & Grey, 2014). The meaning of symptoms can often be uncertain and individuals have in the past sought advice from family and friends about whether a symptom is a sign of a serious illness (Hartzband & Groopman, 2010). However, Google is now being used as an alternative resource for un‐ derstanding symptoms, with Google searches frequently used by the public to determine the significance and threat posed by particular symptoms and whether medical assistance should be sought (Jacobs, Amuta, & Jeon, 2017). Perhaps it is Google’s anonymity, accessibility and information availability that has seen health-related searches become the second most searched thematic area amongst all searches (Sullivan, 2016), with searches for symptoms now accounting for approximately 1% of the three billion searches each day (Pinchin, 2016). In patients specifically, a recent survey of those attending an emergency department found that 49% regularly use the in‐ ternet for health information and 35% had searched for information on their specific symptoms before presenting (Cocco et al., 2018). Patients can also check their symptoms using online symptom checking algorithms that can provide advice about whether to seek medical care (Semigran, Linder, Gidengil, & Mehrotra, 2015). There has been concern raised that such searches may lead to a baseless increase in health anxiety or “cyberchondria” due to the fact that searches for common symptoms are often linked to rare, serious or fatal illnesses (Filipkowski et al., 2010; North, Ward, Varkey, & Tulledge-Scheitel, 2012; White & Horvitz, 2009). Given the impact that health anxiety has shown in areas such as healthcare utilisation (Barsky, Ettner, Horsky, & Bates, 2001), there is surprisingly little information available on when individuals search for symptoms and how this may relate to utilisation of health care and the demand for out of hours care. Time-Analysis of Google Searches 2 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://www.psychopen.eu/ The access to Google search data through Google Trends has enabled research on how often particular search terms are entered relative to the total volume of searches. This data can also be aggregated for different parts of the world or different time periods. Analyses of search terms by Google Trends has been used to estimate the level of influ‐ enza illness in a population (Lampos, Miller, Crossan, & Stefansen, 2015), stock market trends (Preis, Moat, & Stanley, 2013), and to investigate sensitive topics like sexual behav‐ iour, where surveys are likely to lead to misleading data (Stephens-Davidowitz, 2017). Analysis of Google Trends for symptom searches can provide aggregated data on precise‐ ly when - during the day or the week - people are more likely to be looking for informa‐ tion about their symptoms and thus offer information about the likely demand for non- urgent care. In this study we examined when individuals searched for common symp‐ toms across a 24-hour period and on what days of the week. Based on previous work on the non-urgent demand for emergency department visits in the United Kingdom, which showed that the majority of non-urgent attendance occurs late at night or in the early hours of the morning (O’Keeffe, Mason, Jacques, & Nicholl, 2018), we hypothesized that Google searches about symptoms would follow a similar pattern. M e t h o d Symptoms We used a list of 50 common symptoms to investigate the peak search period for each symptom. Forty-seven symptoms were drawn from a previous study investigating the frequency of symptom complaints in a general population sample (Petrie et al., 2014). These included common symptoms such as back pain, fatigue, headache, insomnia and joint pain. We also added three other terms to the list. This included “hangover”, due to the frequency of this condition reported in general population studies (Gjerde et al., 2010; Tolstrup, Stephens, & Grønbaek, 2014) and its association with emergency room and pri‐ mary care visits (Cherpitel & Ye, 2015). As it has often been acknowledged that searching benign symptoms in Google can produce results suggesting cancer or imminent death (North et al., 2012; White & Horvitz, 2009), we included both “cancer” and “death” in the list. Google Search Data Google Trends (trends.google.com) is a publicly available online tool that allows people to analyse how often a specific term or phrase has been searched in Google over a speci‐ fied time period or in a particular geographic region, relative to other searches (Nuti et al., 2014). Google Trends adjusts the data by taking a random sample of searches for a term and computing its popularity relative to the total number of Google searches over Petrie, MacKrill, Silvester et al. 3 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://www.psychopen.eu/ the same period of time. The time point with highest search volume for a term has the value of 100, while a score of 50 indicates half the popularity. A Google Trends search for the 50 symptoms or conditions of interest in the United Kingdom was conducted. If a symptom phrase contained ‘or’, as in fever or increased temperature, this was changed to + in the Google Trend search. Symptoms such as back or neck pain became back pain + neck pain. Prior to searching, computer clocks were changed to London time to ensure that the Google Trend results corresponded to the cor‐ rect time zone. The time period of the search was the week from July 30 to August 5, 2018. We chose this week during the summer period so the data was less likely to be af‐ fected by winter colds and flu viruses. As minutes are only available for time periods of 24-hours or less, Wednesday August 1 was taken as the representative day of the week and the time (hours and minutes) that each symptom was searched the most on this day was recorded. The day of the week that had the greatest number of searches for each symptom was also examined. Collecting data over short periods, such as the week used in the present study, has demonstrated strong predictive power and representation of fu‐ ture data. For example, collecting data from one Saturday-Sunday period can forecast economic trends for subsequent months (Choi & Varian, 2012). The rate of Google searches during the day (6am to midnight) and night were calcula‐ ted using www.openepi.com and compared using a mid-P exact method. The median number of symptoms searched for on Google during the hours 6am to midnight was compared to the number at night (midnight to 6am) using the Wilcoxon non-parametric method and a Poisson regression model was to determine whether the number of Google searches performed per hour differed. Analyses were performed in SAS (v 9.4, SAS Insti‐ tute Inc, Cary, NC). The significance level was set at p < .05. R e s u l t s We examined the peak time for searches for each of the 50 symptoms and these are illus‐ trated in Figure 1. All of the peak searches for symptoms occur between 10pm and 8am. Only 3 searches for symptoms (cancer, increased appetite and sexual problems) peak be‐ fore midnight and only 2 (muscle pain and difficulty concentrating) are after 6am. Of the remaining symptom searches, the majority 32/50 (64%) occur between 3am to 6am, while 12/50 (24%) are between midnight and 3pm; these include death at 1.48am. The hour with the most symptom searches is 4-5am with 16 (32%) conducted during this period. Time-Analysis of Google Searches 4 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 http://www.openepi.com https://www.psychopen.eu/ Figure 1. Peak of searches for common symptoms in United Kingdom during the week of July 30 to August 5, 2018. In total there were 45 symptoms reported in the 6 hours from midnight to 6 am (night- time) (7.5 searched per hour, 95% CI [5.5, 9.9]). During the day (6am to midnight) there were 5 searches in 18 hours (0.28 searches per hour, 95% CI [.01, 0.62]). There were there‐ fore about 7 searches fewer per hour in the day than at night (rate difference -7.2 (-9.4, -5.0) (mid-P exact comparison of rates (p < .0001). Significantly fewer symptoms were re‐ ported during the day than at night (median (min, max) 0 (0,2) v 5.5 (0,17) respectively, p = .001). There was a significant difference in the number of counts observed between hour blocks (Poisson regression, p < .0001). We next examined the distribution of symptom search peaks over the days of the week we sampled. We found that Monday, Tuesday and Friday had the greatest numbers of peaks of searches for symptoms, each with 10. Saturday was lowest with 3 symptoms, while Wednesday had 7, Thursday 4 and Sunday 6. Most symptoms (76%) did not differ in the peak pattern of searching across the week. This is illustrated in the top two panels of Figure 2, which shows the pattern of searches for cough and vomiting. Death also shows a similar daily pattern. An exception is searches for hangover, which show a strong weekly pattern with higher levels over the weekend and lower numbers of searches for hangover symptoms during the week (bottom of Figure 2). Petrie, MacKrill, Silvester et al. 5 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://www.psychopen.eu/ Figure 2. Weekly pattern of symptom searching for cough, vomiting, death and hangover symptoms. The other symptoms that did not show a strong weekly pattern were increased appetite, sexual problems, low blood pressure, difficulty urinating, muscle weakness, dizziness, bruising easily, agitation, depressed mood, ear or hearing problems and difficulty concen‐ trating. D i s c u s s i o n We found searches for symptoms are much more likely to occur relative to other searches during the night-time hours, and particularly between 3 and 6am. Most symptom search‐ es show a consistent pattern over the week, with peaks at similar times of night. Symp‐ tom searches are more common during the week and lowest during the weekend. The results suggest that individuals with high levels of health anxiety may be advised to re‐ strict Google symptom searches during the night-time in order to avoid unnecessary worry and healthcare use brought on by anxiety-provoking search results. Another im‐ plication may be for clinicians to ask about, and treat, sleeping problems in patients with high levels of somatic complaints. The pattern of searches for symptoms during the night-time hours is consistent with previous research showing that people are most likely to notice symptoms when they are alone, not distracted by other activity and have time to focus on sensations that they Time-Analysis of Google Searches 6 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://www.psychopen.eu/ rarely notice when immersed in daily life (Pennebaker, 1982). The night-time period is also a time when it is difficult to consult medical services about symptom concerns. Pre‐ vious analysis of Google trends has also noted that searches for the “big” questions such as “What is the meaning of life?” and “Is there life on other planets?” also peak between 2 and 4 am (Stephens-Davidowitz, 2017). The study also highlights the use that can be made of Google Trends for understanding patient search behaviour around health issues. Analysis of Google searches has been used recently for understanding how patients man‐ age their gout and arthritis (Jordan, Pennebaker, Petrie, & Dalbeth, 2018), whether using Google is associated with statin intolerance (Khan, Holbrook, & Shah, 2018) and for see‐ ing if particular internet searches were associated with a subsequent diagnosis of pancre‐ atic cancer (Paparrizos, White, & Horvitz, 2016). Some limitations of the study should be acknowledged. The data is limited to those with internet access and who use Google as opposed to other search engines. The data is from only one country and needs replication in other locations and in non-English speaking populations. As we used symptoms as specific search terms, we do not know what exactly the search was about or its context. It is also not possible to get absolute rather than relative numbers of searches. It should also be noted that there is a lack of information on how data from Google Trends is derived, including the proportion of total searches sampled and the algorithms involved (Nuti et al., 2014). Bearing these limita‐ tions in mind, it is likely that Google Trends may in the future provide more insights into how patients use the internet to seek information on health topics and as a driver for seeking health care. It is also important to consider that Google searches may have positive effects for pa‐ tients and healthcare professionals alike. For example, a recent survey of adult patients presenting to an emergency department demonstrated that searching for symptoms on Google and seeking information online resulted in a more positive doctor-patient interac‐ tion and did not reduce adherence to treatment (Cocco et al., 2018). For these patients, it may be that the internet serves as a supplementary resource that provides information that supports the doctor’s opinions and enhances this relationship (Wald, Dube, & Anthony, 2007). However, this is dependent on the information being searched for re‐ flecting the opinion of the health professional; in cases where the two information sour‐ ces are incongruent, the relationship can be negatively affected and patients may become more likely to ignore healthcare professional advice (Russ, Giveon, Catarivas, & Yaphe, 2011). As such, while searching for symptoms may have some beneficial outcomes, the extent of this is limited by the accuracy the information searches provide. This research has various implications for health professionals. Firstly, a greater un‐ derstanding of patterns of high internet symptom searching may help health professio‐ nals better understand and determine the health anxiety levels of a patient, and how that may contribute to the experience of symptoms. Given that patients with higher anxiety levels may be more likely to misattribute general symptoms to an illness (Severeijns, Petrie, MacKrill, Silvester et al. 7 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://www.psychopen.eu/ Vlaeyen, van den Hout, & Picavet, 2004) and are more likely to seek out information about symptoms online (Eastin & Guinsler, 2006), asking about online search activity may be valuable clinical information. Secondly, this research may have significant applications at a population level such as better management of healthcare services. 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Annual Symposium Proceedings - AMIA Symposium, 2009, 696-700. Clinical Psychology in Europe (CPE) is the official journal of the European Association of Clinical Psychology and Psychological Treatment (EACLIPT). PsychOpen GOLD is a publishing service by Leibniz Institute for Psychology Information (ZPID), Germany. Time-Analysis of Google Searches 10 Clinical Psychology in Europe 2019, Vol.1(2), Article 32774 https://doi.org/10.32872/cpe.v1i2.32774 https://blog.google/products/search/im-feeling-yucky-searching-for-symptoms https://doi.org/10.1038/srep01684 https://doi.org/10.1136/bmj.h3480 https://doi.org/10.1037/0278-6133.23.1.49 http://searchengineland.com/google-nowhandles-2-999-trillion-searches-per-year-250247 https://doi.org/10.1111/acer.12238 https://doi.org/10.1016/j.pec.2007.05.016 https://www.psychopen.eu/ Time-Analysis of Google Searches (Introduction) Method Symptoms Google Search Data Results Discussion (Additional Information) Funding Competing Interests Acknowledgments References