Literature DB >> 26495842

Worse Health Status and Higher Incidence of Health Disorders in Rhesus Negative Subjects.

Jaroslav Flegr1, Rudolf Hoffmann2, Mike Dammann1.   

Abstract

Rhesus-positive and Rhesus-negative persons differ in the presence-absence of highly immunogenic RhD protein on the erythrocyte membrane. The biological function of the RhD molecule is unknown. Its structure suggests that the molecular complex with RhD protein transports NH3 or CO2 molecules across the erythrocyte cell membrane. Some data indicate that RhD positive and RhD negative subjects differ in their tolerance to certain biological factors, including, Toxoplasma infection, aging and fatique. Present cross sectional study performed on 3,130 subjects) showed that Rhesus negative subjects differed in many indices of their health status, including incidences of many disorders. Rhesus negative subjects reported to have more frequent allergic, digestive, heart, hematological, immunity, mental health, and neurological problems. On the population level, a Rhesus-negativity-associated burden could be compensated for, for example, by the heterozygote advantage, but for Rhesus negative subjects this burden represents a serious problem.

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Year:  2015        PMID: 26495842      PMCID: PMC4619848          DOI: 10.1371/journal.pone.0141362

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Polymorphism in the Rhesus factor, namely the existence of a large deletion in the RHD gene [1] in a substantial fraction of the human population, has been an evolutionary enigma since the discovery of this factor in the 1930’s [2-5]. Theoretically, neither the RhD-negative allele can successfully spread in the RhD positive population nor the RhD-positive allele can spread in the RhD negative population [6,7]. Before the introduction of prophylactic treatment in 1968, a positive frequency dependent selection systematically penalized the less abundant allele because lots of children of RhD-negative women in the mostly RhD-positive population as well as children of RhD- positive men in the mostly RhD-positive population were dying of hemolytic anemia. It has been suggested that this polymorphism can be stabilized when the disadvantage of carriers of the locally rarer allele is counterbalanced by higher viability of their heterozygote children or by another form of frequency-dependent selection [6]. In the past seven years, several studies have demonstrated that Rhesus positive and Rhesus negative subjects differ in resistance to the adverse effects of parasitic infections, aging, fatigue and smoking [7-13]. A study performed on 250 blood donors has further shown that the resistance to effects of toxoplasmosis is higher in Rhesus positive heterozygotes than in Rhesus positive homozygotes and substantially higher than in Rhesus negative homozogotes [7]. This is the first direct evidence for the role of selection in favour of heterozygotes in stabilization of the RHD gene polymorphism in human populations. Such a mechanism is reminiscent of widely known situations with polymorphism in genes associated with sickle cell anaemia in geographic regions with endemic malaria [14]. The results of previous studies suggest that RhD negative homozygotes could have a worse health status than RhD positive population consisting of RhD positive homozygotes and heterozygotes. These results, however, were obtained on either rather small or rather specific populations, e.g. military personnel [13] or pregnant women [12]. To obtain more reliable data about situation in more typical populations, we run a large questionnaire study in a population of healthy Czech and Slovak volunteers. Using an electronic questionnaire distributed with a Facebook-based snowball method [15], we have screened a population of 3,130 subjects for indices of various health problems as well as for incidences of 225 diseases and disorders.

Methods

Ethics Statement

Only subjects older 18 years were invited and allowed to start the internet test. We erased data of 7 subjects who claimed to be younger as well as the data of all subjects who did not respond how old they were. The study, including the method of obtaining an electronic consent with a participation in the study (by pressing a particular button), was approved by the IRB of the Faculty of Science, Charles University (Komise pro práci s lidmi a lidským materiálem Přírodovědecké Fakulty Univerzity Karlovy)—No. 2014/21.

Subjects

The subjects were invited to participate in the study using a Facebook-based snowball method [15] by posting an invitation to participate in “an experiment searching for associations between the blood group of a subject and his/her personality, performance, morphology and health” on the wall of the Facebook page “Guinea pigs” for Czech and Slovak nationals willing to take part in diverse evolutionary psychological experiments (www.facebook.com/pokusnikralici). The participants were informed about the aims of the study on the first page of the electronic questionnaire: “The subject of the present study is searching for associations between the blood group of a subject and his/her personality, performance, morphology and health. If you can check up on what your blood group is, please do it now. “They were also provided with the following information: “The questionnaire is anonymous and obtained data will be used exclusively for scientific purposes. Your cooperation in the project is voluntary and you can terminate it at any time by closing this web page. If you can check up on what your blood group is, please do it now. We need the data from subjects with all blood groups, not only from Rh negative subjects. Therefore, please share the link to this questionnaire with your friends, for example on Facebook. Press the “continue” button if you agree to your anonymous participation in the study”. The share button was pressed by 480 participants, which resulted in obtaining data from 4,286 responders in total between 28.4. 2014–9.3. 2015. Data file is available as the S1 File.

Questionnaire

The anamnestic questionnaire was prepared by two medical doctors and was distributed as a Czech/English Qualtrics survey (http://1url.cz/q05K). It contained two categories of questions. The first of them monitored presence and intensity of general and specific health problems of responders. The responders were asked to subjectively rate of their allergic, cancer, digestive, fertility, genitourinary, heart, hematological, immunity, mental health, metabolic including endocrine, musculoskeletal, neurological, respiratory organs, sense organs, and sexual life problems using 6-points Likert.scales. The second group of questions tried to collect objective information reflecting the health status of responders. We asked the responders, for example, how many drugs prescribed by doctors they currently takes per day, how many of “different herbs, food supplements, multivitamins, superfoods etc.” they currently take per day, how many times they used antibiotics during the past 365 days. We also provided the responders lists of about 250 disorders (separated to 15 categories) and asked them to tick which of them they were diagnosed with. The questionnaire contained, among others, also the following questions: “What is your Rh blood group?” with three options: a) I do not know / I am not sure, b) negative (this is the less frequent variant) c) positive (the more frequent variant). Implicitly, the answer a) (I do not know/I am not sure) was checked.

Statistical methods

Before statistical analysis, suspicious data (too high or too short body height, too low or too high body mass or age, too short duration of the test etc.) were filtered out (26 cases). In the test, we also measured simple reaction times, operational, short-term and long-term memory, psychomotor performance, intelligence and personality profiles. However, here we have analyzed only data concerning health status. SPSS v. 21. was used for all statistical tests. Ordinal and binary data were analyzed by partial Kendall´s correlation test [16,17]. This test measures strength and significance of association between binary, ordinal and continuous data regardless of their distributions. This technique enabled us to control for one confounding variable, for example the age of a responder. The Excel sheet for computing partial Kendall’s Tau and the significance between variables A and B after the variable C is controlled based on Kendall Tau´s AB, AC and BC. It is available here: http://web.natur.cuni.cz/flegr/programy.php (item no. 12) and in S2 File. Certain diseases have very different incidence in men and women. Also, some biological factors, including RhD phenotype, could have different impacts on men and women. Therefore, we performed all analyses for all responders and also separately for the male and female responders.

Results

Descriptive statistics of data

Among 4,286 Czech and Slovak participants of a subsequent case-control study, 3,130 subjects (840 RhD positive men, 317 RhD negative men, 1,337 RhD positive women and 636 RhD negative women) provided information about their gender and RhD phenotype. RhD negative subjects, especially women, have higher motivation to care about, and to remember, their RhD phenotype. Therefore, the frequency of RhD negative subjects (30.4%) differed from the 16% general frequencies within the Czech and Slovak populations and also between men (27.4%) and women (32.2%). The mean age of RhD positive men (37.6, S.D. 13.5) was approximately the same as that of RhD negative men (37.7, S.D. 12.7), t = -0.10, P = 0.923. RhD positive women were younger (33.6, S.D. 11.9) than RhD negative women (35.2, S.D. 12.7), t = 2.74, P = 0.006. The numbers of men and women in the particular age strata were comparable, with the exception of the 21–30 age stratum, which consisted of 363 men and 842 women (Fig 1).
Fig 1

Age distribution for male and female participants of a study.

Correlation of RhD phenotype with self-reported health problems (ordinal variables)

Twenty-two dependent variables (mostly ratings of particular health problems on a scale from 1–6, 1: “no problems at all”, 6: “frequent or serious”) were ordinal and had a highly skewed distribution. Therefore, the nonparametric partial Kendall’s correlation test (which enables to control one confounding variable, here the age) was used to search for an association between the RhD phenotype and the intensity of fifteen categories of health problems (allergic, cancer, digestive, fertility, genitourinary, heart, hematological, immunity, mental health, metabolic including endocrine, musculoskeletal, neurological, respiratory organs, sense organs, and sexual life problems) and also another six health-related variables, namely the numbers of drugs prescribed by doctors that the subject currently takes per day, numbers of “different herbs, food supplements, multivitamins, superfoods etc.” the subject currently takes per day, how many times the subject has used antibiotics during the past 365 days, how many times the subject was required to seek acute medical care for a serious illness (not injury) that lasted more than 3 days during the past 5 years, how many specialized medical doctors the subject had to regularly attend (not for prevention) at least once in the past two years, how often the subject felt tired (not after exertion, e.g. sports) and how often the subject has experienced a headache. The results showed that the RhD negative subjects had more serious health problems in 6 of 22 analyzed variables than the RhD positive subjects (Table 1).
Table 1

Difference in various health status related variables between RhD negative and RhD positive subjects.

allmenwomen
problems Tau p Tau p Tau p
allergic0.0180.1530.0160.4440.0120.450
cancer0.0080.514-0.053 0.012* 0.031 0.052
digestive0.034 0.008* -0.0160.4430.050 0.002*
fertility-0.0090.4750.045 0.035* -0.042 0.009*
genitourinary0.0060.628-0.0260.223-0.0030.844
heart & vascular0.031 0.015* 0.0010.9710.047 0.003*
hematological0.028 0.028* -0.0280.1850.031 0.053
immunity0.034 0.007* 0.0230.2680.0240.126
metabolic-0.0060.672-0.0200.342-0.0170.296
musculoskeletal0.0150.264-0.039 0.069 0.035 0.034*
mental health0.0130.3220.049 0.024* -0.0120.460
neurological0.0160.2250.060 0.005* -0.0130.417
respiratory org.-0.0030.798-0.0020.918-0.0080.613
sense organs-0.0140.279-0.0330.120-0.0120.454
sexual life-0.0120.369-0.0110.615-0.0070.649
medicine/day0.049 0.000* 0.047 0.025* 0.045 0.004*
herbs/day-0.0010.9420.045 0.030* -0.039 0.014*
antibiotics/year0.0140.269-0.0220.2900.0230.136
acute care/5 years0.0020.8830.0160.429-0.0130.418
doctors/2 years0.0180.162-0.0170.4250.0250.122
tired (frequency)0.026 0.046* 0.0100.6370.0190.238
headache (frequency)0.0130.3210.0240.264-0.0200.214

Number of responders varied between particular questions and was about 1,000 for men and 1,800 for women. Mostly significant effects of age on health status were controlled in present partial Kendall Tau test. Positivity of Tau indicates that RhD negative subjects have higher values of particular health related variables, i.e., a worse health status. Significant results (P < 0.05) and trends (P < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. Values < 0.0005 are coded as 0.000.

Number of responders varied between particular questions and was about 1,000 for men and 1,800 for women. Mostly significant effects of age on health status were controlled in present partial Kendall Tau test. Positivity of Tau indicates that RhD negative subjects have higher values of particular health related variables, i.e., a worse health status. Significant results (P < 0.05) and trends (P < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. Values < 0.0005 are coded as 0.000.

Association between RhD phenotype and incidence of particular diseases (binary variables)

After rating each particular category of health problems, the subjects were asked to identify which specific disorders they suffered from on the lists of 225 disorders. They were also asked to identify which specialized medical doctors they had to visit regularly (not for prevention) at least once in the past two years from a list of 10 types of specialists. The associations were analyzed with the partial Kendall’s Tau correlation test with age being a covariate. One hundred fifty four (154) of 225 diseases/disorders were reported by at least 10 subjects. Within this subset, 31 significant associations with RhD negativity (21 positive and 10 negative) were expressed in all subjects. In male subjects, the number of significant association was 35 (19 positive and 16 negative) while in female subjects the number of significant associations was 30 (18 positive and 12 negative). The expected number of false significant results for 462 statistical tests was not 96 but 23. For example, RhD negative men more often reported certain mental health disorders including panic disorders, antisocial personality disorders and attention deficits, ticks, fasciculation, thyroiditis, immunity disorders, allergies, especially skin allergies, excessive bleedings, anemia, osteoporosis, liver disease, infectious diseases and acute diarrhea diseases, while they less often reported gall bladder attacks, coeliac disease, maldigestion, malabsobtion, warts, some types of cancers and prostate hypertrophy. RhD negative women reported more frequently psoriasis, constipation and diarrheas, ischemic diseases, type 2 diabetes, some types of cancers, lymphatic nodes swelling, vitamin B deficiency, thrombosis, tonsil stones, too high sex desire, precocious puberty, urinary tract infections, scoliosis and they less often reported hearing loss, weight loss, hypoglycemia, glaucoma, fasciculation and warts. RhD negative subjects had to make more frequent visits to medical professionals specializing in otolaryngology (P = 0.021), psychiatry (P = 0.008), gynecology (P < 0.001), and dermatology (P = 0.014) (the theoretical number of false positive results was 0.5). Table 2 shows the associations between RhD negativity and disease incidences while Table 3 shows the associations between RhD negativity and visiting specialized doctors.
Table 2

Differences in incidences of particular disorders between RhD positive and RhD negative subjects.

AllMenWomen
Rh-Dis-Rh-Dis+Rh+ Dis-Rh+ Dis+ Tau P Rh-Dis-Rh-Dis+Rh+ Dis-Rh+ Dis+ Tau P Rh-Dis-Rh-Dis+Rh+ Dis-Rh+ Dis+ Tau P
Pharyngitis2945916001379-0.030 0.017* 100185255498-0.0120.570194406345881-0.045 0.004*
Bronchitis, pneumonia6861991519460-0.0090.47623352602151-0.0210.320453147917309-0.0090.558
Rhinitis, tonsilitis36751884711320.0150.2401341513623910.0100.6302333674857410.0100.513
Ectoparasites, e.g. lice73814716493300.0020.86825035675780.0280.174488112974252-0.0180.253
Scabies86817193049-0.0180.147280573320-0.0260.20358812119729-0.0140.378
Helminthiasis844411876103-0.0120.32527213723300.0130.54557228115373-0.027 0.090
Acute diarrhea dis.72416116793000.040 0.001* 23847658950.051 0.014* 48611410212050.031 0.046*
Acquired immunodef.86619193544-0.0030.796283274310-0.0260.202583171192340.0000.991
Flu and flu-like virosis2975886321347-0.0130.31287198228525-0.0010.945210390404822-0.0140.381
Borreliosis8018418071720.0110.3912642169459-0.0090.6775376311131130.0160.297
Other thick born dis8787196217-0.0030.797280574580.0280.177598212179-0.0240.128
Sexually transmit. dis.87015193445-0.0180.142280573815-0.0080.71259010119630-0.0240.118
Hepatitis A, E8787195524-0.022 0.083 283274112-0.035 0.088 5955121412-0.0120.448
Hepatitis B8796197090.0130.303282374850.0190.3555973122240.0120.452
Herpes zoster832531855124-0.0070.5532721370845-0.0280.181560401147790.0000.978
Herpes, oral or genital62326214105690.0080.53121867559194-0.0230.2594051958513750.0170.275
Meningoencephalitis872131960190.021 0.087 281474760.0270.18559191213130.0170.279
Inflamm. of middle ear61826714005790.0110.379212735651880.0070.7394061948353910.0070.637
Eye infections7841011739240-0.0090.46726124699540.0210.309523771040186-0.030 0.058
Other infectious dis.8236218741050.034 0.007* 26520719340.050 0.015* 558421155710.0240.131
Skin mycosis68619915584210.0130.31024639626127-0.040 0.055 4401609322940.028 0.076
Bacterial skin infect.8226318511280.0130.28526520704490.0090.654557431147790.0170.288
Warts6002851244735-0.045 0.000* 19491479274-0.041 0.048* 406194765461-0.047 0.003*
Lymphatic modes swelling840451883960.0070.58827510727260.0010.943565351156700.0060.712
Mononucleosis7781071728251-0.0070.5872622369063-0.0040.831516841038188-0.0160.312
Tonsil stones65718315343300.047 0.000* 23536631960.0010.9704221479032340.057 0.000*
Skin allergy64622414824620.022 0.075 230526331040.054 0.010* 416172849358-0.0040.810
Food allergy7651051698246-0.0070.5772592367067-0.0140.491506821028179-0.0110.495
Respiratory allergy53533511937510.0010.935174108448289-0.0080.7163612277454620.0070.673
Other allergies8066418141300.0110.36126022699380.050 0.016* 54642111592-0.0110.493
Autoimmunity803501815940.0190.1272698709130.0340.103534421106810.0070.682
Rheumatoid arthritis831221880290.033 0.008* 271671390.0330.117560161167200.031 0.052
Haematological autoimmunity dis.84851898110.0000.98527617184-0.0120.5585724118070.0060.723
Thyroiditis7817217891200.038 0.002* 2698711110.045 0.034* 5126410781090.027 0.085
Immunodeficiency813401824850.0060.6512725709130.0000.998541351115720.0010.964
Bechterew´s dis.8476190270.022 0.088 275271930.0190.3675724118340.0230.141
Other immunolog. dis.796571830790.054 0.000* 26215707150.088 0.000* 534421123640.037 0.021*
Psoriasis829241867420.0170.177268969824-0.0020.919561151169180.035 0.027*
Stomach or duodenal ulcer810341840620.0170.17826411704250.0130.544546231136370.0200.212
Chronic gastritis82717184557-0.030 0.018* 272371415-0.0330.11255514113142-0.033 0.038*
Liver disease806381841610.031 0.014* 26312713160.058 0.006* 543261128450.0160.303
Diarrheas64719714964060.027 0.034* 23441594135-0.041 0.050* 4131569022710.055 0.001*
Constipation70114316382640.042 0.001* 2611468940-0.0080.7194401299492240.044 0.006*
Maldigestion, food intolerance7331111646256-0.0020.8452611466366-0.065 0.002* 472979831900.0130.405
Malabsoption822221864380.0190.137270572360.043 0.042* 552171141320.0060.707
Bulimia, anorexia82420184656-0.0150.2472752757297290.0001.00054920111756-0.027 0.086
Flatulence67616815593430.023 0.076 23540621108-0.0030.8754411289382350.029 0.075
Weight loss82618184656-0.021 0.094 272372360.0140.52155415112350-0.038 0.017*
Other digestive dis.817271844580.0040.7642669710190.0180.39355118113439-0.0050.764
Pyrosis reflux68216215553470.0100.453224515981310.0060.7744581119572160.0100.519
Gall bladder attack81232181290-0.023 0.065 272370425-0.064 0.002* 54029110865-0.0140.376
Coeliac disease83410187725-0.0050.67727507236-0.048 0.024* 559101154190.0050.762
Hypertensive disease80818181648-0.0160.222261468921-0.042 0.049* 54714112727-0.0020.910
Ischaemic disease8197185680.024 0.067 26417046-0.0260.2295556115220.059 0.000*
Other heart dis.80125179173-0.022 0.091 2551068228-0.0040.85554615110945-0.031 0.055
Excessive bleeding816101848160.0160.203263270910.049 0.021* 55381139150.0040.792
Thrombosis815111847170.0180.171264169911-0.048 0.024* 55110114860.060 0.000*
Atrial fibrilation824218568-0.0150.25426507064-0.039 0.065 5592115040.0001.000
Arrhythmia, non serious754721700164-0.0030.8212491665753-0.0250.2375055610431110.0030.865
Arrythmia, serious8224185680.0020.87526417055-0.0200.3585583115130.0200.206
Anemia71210316671840.039 0.002* 2579701110.058 0.007* 455949661730.0210.186
High leukocytes level803121827240.0060.630261570570.036 0.092 5427112217-0.0100.541
Low leukocytes level805101831200.0070.604262470570.0220.2995436112613-0.0020.910
Other problems with leucocytes8123184110-0.0120.35226607075-0.044 0.039* 5463113450.0070.679
Other blood diseases793221804470.0040.734260669022-0.0220.295533161114250.0210.188
High platelets level8105184470.0160.211264270930.0210.3345463113540.0140.383
Low platalets level8096182922-0.0200.11626517066-0.0250.2515445112316-0.0210.193
Excessive bleeding768471767840.027 0.038* 263370750.0210.327505441060790.0190.231
Accented blood clotting8069181536-0.029 0.023* 26517039-0.039 0.065 5418111227-0.029 0.078
Iron deficiency70610916362150.025 0.052 261569814-0.0030.8884451049382010.0140.376
Lymphatic nodes swelling799161828230.027 0.034* 26517075-0.0190.375534151121180.038 0.018*
Vitamin B12 deficiency794211822290.034 0.008* 26517066-0.0250.240529201116230.048 0.003*
Type1 diabetes7936180590.0150.237259369930.040 0.060 5343110660.0010.939
Crohn's disease7945180860.0200.118261170020.0080.7235334110840.0250.132
Immunodeficiency78514177638-0.0110.387258469660.0300.16752710108032-0.031 0.058
Type 2 diabetes786131787270.0020.903259368517-0.042 0.054 527101102100.036 0.028*
Hypothyroidism7247516741400.028 0.033* 26026948-0.0160.449464739801320.0220.181
Hyperthyroidism79181796180.0000.98826207011-0.0200.3585298109517-0.0020.882
Inborn metabolic dis.7954180590.0010.96326206984-0.039 0.069 5334110750.0190.254
Obesity720791630184-0.0080.52823824649530.0250.24148255981131-0.031 0.062
Hypoglycemia7945179123-0.028 0.030* 260269840.0110.5945343109319-0.047 0.004*
Osteoporosis785141786280.0050.716261170200.052 0.015* 52413108428-0.0090.579
Delayed puberty7927179717-0.0020.859261169210-0.043 0.044* 5316110570.0270.103
Precocious puberty7936180770.023 0.072 26207002-0.0280.1965316110750.037 0.024*
Amenorrhea788111793210.0100.4242622627027020.0001.000526111091210.0070.669
Other metabolic dis.773261759550.0060.664258469111-0.0010.950515221068440.0020.909
Melanoma and other skin cancer82851875100.0030.79327307156-0.048 0.022* 5555116040.034 0.032*
Breast cancer831218769-0.0190.1432732737217210.0001.000558211559-0.028 0.084
Cervix uteri cancer821121868170.023 0.067 2732737217210.0001.000548121147170.0230.161
Other cancer diseases82491874110.026 0.042* 27307138-0.056 0.009* 5519116130.075 0.000*
Urinary tract infections60618414733260.060 0.000* 24520657450.0190.3643611648162810.058 0.000*
Nephrosis, glumerulonephritis779111778210.0090.50126416966-0.0260.234515101082150.0200.233
Bladder infection, cystitis7256516661330.0140.2692614692100.0030.896464619741230.0050.782
Prostate hypertrophy7873177326-0.051 0.000* 262367626-0.070 0.001* 525525109710970.0001.000
Gynaecological infections64414615182810.038 0.004* 26507002-0.0280.1973791468182790.0260.116
Cervical precancerosis or cancer778121774250.0050.7252652657027020.0001.00051312107225-0.0020.923
Obstretic complications760301743560.0150.2622652657027020.0001.000495301041560.0060.737
Recurrent abortions778121773260.0010.9432652657027020.0001.00051312107126-0.0070.659
Kidney stones77812175643-0.030 0.024* 261468814-0.0170.4305178106829-0.037 0.024*
Other genitourinary dis.771191759400.0060.669263268220-0.063 0.004* 508171077200.045 0.007*
Glaucoma7984179323-0.036 0.006* 26226967-0.0110.6065362109716-0.050 0.002*
Cataracts, clouding of the lens7939179620-0.0020.8802604693100.0020.9205335110310-0.0020.905
Refractive errors438364982834-0.0060.646161103422281-0.0090.661277261560553-0.0130.436
Hearing loss77329171799-0.041 0.002* 2511366142-0.0210.32752216105657-0.051 0.002*
Macular degeneration791111797190.0130.31926136949-0.0060.78553081103100.0240.144
Strabismus78616177739-0.0060.669258668518-0.0090.68752810109221-0.0010.930
Sense of smell problems78913176551-0.037 0.005* 258667429-0.045 0.037 5317109122-0.0260.117
Sense of taste prob.800218079-0.0180.16726406994-0.040 0.065 536211085-0.0060.706
Ringing in the ears741611671145-0.0100.4652392562677-0.0230.285502361045680.0080.624
Other sense organs dis.767351745710.0110.4152541067132-0.0160.445513251074390.0270.100
Sense of motion problems772301757590.0110.403260468914-0.0160.447512261068450.0150.355
Amblyopia, lazy eye76834172888-0.0140.269256866439-0.053 0.014* 512261064490.0090.595
Extremity neuropathy8028182224-0.0150.24226527029-0.0230.2815376112015-0.0110.499
Multiple sclerosis8055184060.0210.108266171010.0230.2805394113050.0180.261
Epilepsy8055183016-0.0130.319264370650.0210.3355412112411-0.032 0.052
Migraine62718314503960.0140.28723136620910.0090.6763961478303050.0030.850
Other neurologic dis.793171812340.0080.555263470380.0150.484530131109260.0010.959
Stuttering79911181927-0.0030.812263469912-0.0060.76453671120150.0010.962
Tics78030177175-0.0070.60125215685260.045 0.036* 52815108649-0.036 0.027*
Muscle twitch, fasciculation753571705141-0.0100.44324324666450.047 0.029* 51033103996-0.041 0.011*
Cramps7466417001460.0000.9712531466348-0.0270.201493501037980.0100.543
Unipolar depressive disorders76531174278-0.0090.4692529682180.0240.27451322106060-0.028 0.084
Bipolar disorder786101800200.0070.58725926919-0.0220.31752781109110.0230.169
Anxiety disorders7455117201000.0190.13625110674260.0030.879494411046740.0210.200
Alcohol use disorders78791803170.0090.5092565687130.0020.9385314111640.027 0.096
Drug use disorders7888179723-0.0110.396258368812-0.0200.3475305110911-0.0020.901
Post traumatic disorder78511178733-0.0160.22125926928-0.0170.4375269109525-0.0190.239
Obsessive compulsive dis.78313178337-0.0120.338257468218-0.0300.15852691101190.0010.973
Panic disorder767291772480.027 0.035* 2547690100.043 0.048* 513221082380.0170.304
Insomnia primary727691655165-0.0050.68524120658420.0300.15848649997123-0.0270.103
Learning disability767291761590.0110.38925011679210.0310.156517181082380.0010.964
Borderline personality disorder78791804160.0130.325259269640.0110.60852871108120.0130.446
Antisocial personality disorder78791802180.0080.554253869190.061 0.005* 534111119-0.034 0.037*
Attention deficit, hyperactivity772241779410.024 0.068 24714685150.084 0.000* 52510109426-0.0120.466
Other mental health dis.769271777430.030 0.021* 252969280.078 0.000* 517181085350.0070.691
Erectile dysfunction78331174683-0.0210.10523531631820.0000.993548011151-0.0180.260
Too low sex appetency65416014733560.0010.93023135622910.0040.834423125851265-0.0130.428
Too high sex appetency7496516951340.0120.368228386121010.0020.933521271083330.052 0.001*
Too low sex potency8095181118-0.0200.123262469716-0.0240.2595471111420.0000.994
Quality of sex7249016282010.0000.9992442264469-0.0220.304480689841320.0070.690
Other sexuological dis.79123176267-0.0210.1012561068033-0.0180.39253513108234-0.0210.209
Paraphilias (mild)942112157200.0110.3493125830100.0150.43363061327100.0110.484
Spondylosis, spondylitis77491772180.0040.73325626898-0.0170.43451871083100.0160.338
Backbone pain5172661168622-0.0100.430184744981990.0000.987333192670423-0.0250.139
Osteoporosis765181764260.027 0.037* 256269610.050 0.022* 509161068250.0170.292
Rheumatoid arthritis758251741490.0100.4672499673240.0000.993509161068250.0190.258
Scoliosis64613715382520.046 0.000* 22929624730.0120.5834171089141790.054 0.001*
Scheuermann's disease7749176228-0.0170.189254468116-0.0240.2745205108112-0.0070.656
Other musculosceletal dis.758251745450.0200.127252668017-0.0030.878506191065280.031 0.059
Osteoarthrosis742411706840.0080.55524315666310.0270.20949926104053-0.0040.825
Bronchitis721621634156-0.0160.2282461264453-0.054 0.013* 47550990103-0.0020.892
Asthma701821577213-0.0190.13923127626710.0050.82947055951142-0.035 0.035*
Recurrent infections699841585205-0.0120.3452401863760-0.0270.20645966948145-0.0130.430
Other respiratory dis.756271734560.0070.56924810683140.053 0.015* 50817105142-0.0160.330

Numbers of RhD negative subjects without particular disorders, RhD negative subjects with particular disorders, RhD positive subjects without particular disorders, RhD positive subjects with particular disorders, partial Kendall´s Tau and statistical significance, respectively, are shown in six columns of each section. The effect of age on health status was controlled in partial Kendall’s correlation (non-parametric) test. Positive Tau corresponds to a positive association and negative B to a negative association of RhD negativity with incidence of particular disorder. Significant results (p < 0.05) and trends (p < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. p values < 0.0005 are coded as 0.000. The effect size is shown as Tau.

Table 3

Differences between RhD positive and RhD negative participants in specialised medical doctors the subject had to regularly visit at least once in the past two years.

RhD-V-RhD-V+RhD+V-RhD+V+ tau p
All
Internal medicine71010116512130.0110.400
Otolaryngology7209116901740.030 0.021*
Neurology7476417291350.0100.419
Psychiatry7466517511130.036 0.006*
Gynecology64117015393250.045 0.000*
Surgery766451740124-0.0200.114
Infectology797141838260.0130.318
Orthopedy70510616432210.0170.188
Dermatology68013116022620.029 0.023*
Other Doctors6102011357507-0.025 0.051
  Men  
Internal medicine2413061792-0.0280.197
Otolaryngology24229646630.0280.194
Neurology25219669400.0250.238
Psychiatry25417686230.069 0.001*
Gynecology270170720.0070.738
Surgery2492264960-0.0060.792
Infectology266569118-0.0200.341
Orthopedy2442763376-0.0120.585
Dermatology2403162683-0.0030.872
Other Doctors22348556153-0.044 0.040*
  Women    
Internal medicine4697110341210.034 0.038*
Otolaryngology4786210441110.031 0.057
Neurology495451060950.0010.969
Psychiatry492481065900.0170.308
Gynecology3711698323230.037 0.024*
Surgery51723109164-0.0250.124
Infectology5319114780.047 0.004*
Orthopedy4617910101450.030 0.069
Dermatology4401009761790.042 0.010*
Other Doctors387153801354-0.0230.155

Columns 2–5 show numbers of RhD- or RhD+ subjects that had to (V+) and had not to (V-) visit a doctor of particular specialisation within the past 2 years. Columns 6 and 7 show Tau and P computed with partial Kendall´s correlation between two binary variables, i.e. the RhD phenotype and the Visiting doctor, controlled for the confounding variable age of a subject. Positivity of Tau indicates that RhD negative subjects have had to more frequently visit a doctor of particular specialization. Significant results (P < 0.05) and trends (P < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. Values < 0.0005 are coded as 0.000.

Numbers of RhD negative subjects without particular disorders, RhD negative subjects with particular disorders, RhD positive subjects without particular disorders, RhD positive subjects with particular disorders, partial Kendall´s Tau and statistical significance, respectively, are shown in six columns of each section. The effect of age on health status was controlled in partial Kendall’s correlation (non-parametric) test. Positive Tau corresponds to a positive association and negative B to a negative association of RhD negativity with incidence of particular disorder. Significant results (p < 0.05) and trends (p < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. p values < 0.0005 are coded as 0.000. The effect size is shown as Tau. Columns 2–5 show numbers of RhD- or RhD+ subjects that had to (V+) and had not to (V-) visit a doctor of particular specialisation within the past 2 years. Columns 6 and 7 show Tau and P computed with partial Kendall´s correlation between two binary variables, i.e. the RhD phenotype and the Visiting doctor, controlled for the confounding variable age of a subject. Positivity of Tau indicates that RhD negative subjects have had to more frequently visit a doctor of particular specialization. Significant results (P < 0.05) and trends (P < 0.10) are printed in bold. Asterisks indicate results significant in two-sided tests. Values < 0.0005 are coded as 0.000.

Discussion

The RhD negative subjects expressed many indices of a worse health status. Men, women or both sexes reported more frequent allergic, digestive, heart, hematological, immunity, mental health and neurological problems. They also reported the usage of more drugs prescribed by doctors per day, attended more specialized doctors, namely, dermatologists, gynecologists, internal medicine doctors, neurologists, and psychiatrists (men) in the past two years, a higher frequency of headaches and being tired more often than RhD positive subjects. Incidence of various diseases and disorders also differed between RhD negative and RhD positive subjects, mostly being higher in the former. RhD negative subjects have increased the risk of developing of certain heart diseases, respiratory diseases and some immunity and autoimmunity related diseases, for example rheumatoid arthritis. The general pattern suggests that RhD negative subjects could have problems with autoimmunity, could be more resistant to infections of viral origin and could be less resistant to infections of bacterial origin. The mechanism of the effect of the RhD phenotype on human health status is not clear. RhD protein together with strongly homologous RhCE protein and with also homologous RhAG glycoprotein are all components of a membrane complex of which the function is not quite clear. It is most probably involved in NH3 transport and possibly also in CO2 transport [18,19]. This complex is associated with spectrin-based cytoskeleton and therefore plays an important role in maintaining the typical shape (biconcave discoid) of human erythrocytes [20]. The biological functions of complexes containing the RhD protein are unknown. However, they might be involved in NH3 /NH4 + detoxification of organs. Ammonia, the product of protein catabolism is extremely toxic, especially for brain cells and must be quickly removed from the sensitive organs. It was observed that the concentration of ammonium is three times higher in red cells than in plasma [20] and it was further suggested that the RhD containing complex plays a key role in its capturing and its transport to the kidneys and the liver [20]. It was also suggested that the complex might participate in intracellular pH regulation [20] and consequently also in the regulation of local oxygen tension. It was suggested that RhD-negativity-associated anoxia in certain parts of the nervous system could be responsible for physiological (and also behavioral) effects of the RhD phenotype [21]. The variation of the oxygen tension in various organs and tissues could, of course, influence also other biological functions, including the functions of the immune system. This could explain why RhD negativity seems to be associated with neurological, mental health and immunological disorders. The probable roles of the RhD-containing complex in keeping the normal morphology and adhesiveness of red cells (for review see [20]) could be responsible for the observed associations of RhD negativity with some haematological and inflammation-related diseases, including arthritis. Limitations and strength of present study: Using very effective Facebook-based snow-ball method we obtained data from a large number of subjects. However, most of them were relatively young people (mean age was 35.4). Most of the diseases and disorders with the largest public health impact (but possibly not the largest economic impact) start at a higher age in developed European countries such as the Czech and Slovak Republics. This can largely distort the whole picture of the RhD negativity impacts on public health. Future studies (which could be easily done in countries with available national databases of medical records of all citizens) should aim to recruit middle age and senior subjects. Our study compared the health status of RhD negative subjects (16% in general population of Czech and Slovak Republics) with RhD positive subjects, i.e., with the health status of mixed population of RhD positive homozygotes (36% of the general populations within the Czech and Slovak Republics) and heterozygotes (48% the general populations in the Czech and Slovak Republics). The results of the published case-control studies on the effects of the RhD genotype on psychomotor performance [22,23], as well as the heterozygote advantage hypothesis, however, suggest that the health status of RhD positive homozygotes and heterozygotes differs. In further studies concentrated on particular disorders, smaller populations of subjects should be RhD genotyped using molecular biology techniques and then the health status of all three RhD genotypes have to be compared. In the present study, the health status data were collected using a questionnaire. This enabled to study of the effects of the RhD phenotypes on rarer disorders using a large population sample. Of course, more precise and more detailed data could be obtained from medical records. Primarily, we have run the study to confirm or disprove the alarming results of a previous small scale studies performed on non-typical populations. However, we had no a priory hypotheses which health-related variables should correlate with RhD phenotype or which disorders should occur more frequently in RhD negative subjects. Therefore, the present study had a more or less explorative character. Hence, we have reported the results of statistical tests without formal correction to multiple tests. It should be noted, however, that, for example, we have obtained 41% positive results for the ordinal health status variables and 20% positive results for binary health status variables. Theoretically, only 5% of false positive results should be expected in multiple tests. The main strength of the present study is the absence of any sieve effect, which could result in publication bias in other types of studies. Positive results of particularly observational or experimental studies and partly also meta-analytic studies, could be an artefact of intentional or unintentional “cherry-picking”; i.e. preferential or even exclusive publication of positive results. In our study we have searched for the effects of the RhD phenotype on all diseases and all disorders having high enough incidences in the Czech population (n = 154) and we have reported all, both positive and negative results.

Conclusions

Some of the associations observed the present study were relatively strong and some of them concerned rather frequent disorders. Therefore, the total impact of frequency of RhD negative homozygotes in the general population on public health could be large. The aim of the present study was to search for indices of validity of the heterozygote advantage hypothesis, namely for the indices of impaired health status of RhD negative subjects. It must be reminded, however, that the observed specific disease burden of the RhD negative subpopulation is in an agreement with predictions of this hypothesis but does not prove its validity. The higher disease burden in RhD negative homozygotes could be compensated either by increased fitness of heterozygotes (heterozygote advantage hypothesis) or by still unknown selection pressure in favor of RhD negative subjects. In this context, the shorter reaction times of RhD negative, Toxoplasma-free blood donors [7] and university students [8] and higher intelligence in RhD negative, Toxoplasma-infected soldiers [11] should be remembered. It could be speculated to what extent the highly uneven distributions of RHD minus alleles in world populations might be the result of a founder event and a gene flow [24] and to what extent it is also modulated by specific selection pressures caused by differences in the geographical distribution of a disease or diseases.

Excel file containing the data set.

(XLSX) Click here for additional data file.

Excel sheet for computing the partial Kendall correlation test.

(XLS) Click here for additional data file.
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