LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 10 of total 68

Search options

  1. Article: Estimating risk probabilities for sickness from behavioural patterns to identify health challenges in dairy cows with multivariate cumulative sum control charts

    Dittrich, I. / Gertz, M. / Maassen-Francke, B. / Krudewig, K.-H. / Junge, W. / Krieter, J.

    Animal. 2022 July 01,

    2022  

    Abstract: Dairy cattle housing is characterised by increasing herd sizes and the need for assisting technical tools to monitor the cows’ health. This study investigated the combination of logistic regression models with multivariate cumulative sum (MCUSUM) control ...

    Abstract Dairy cattle housing is characterised by increasing herd sizes and the need for assisting technical tools to monitor the cows’ health. This study investigated the combination of logistic regression models with multivariate cumulative sum (MCUSUM) control charts in health monitoring of dairy cattle. Sensor information of 618 cows with 791 lactations (138 438 cow days), nine behavioural variables were included as parts of the behavioural patterns: physical activity (“neck activity”, “leg activity”, “walking duration”), resting (“lying duration”, “standing duration”, “transitions from lying to standing”) and feeding (“feeding duration”, “rumination duration”, “inactivity duration”) behaviour. For each of these behavioural patterns, a logistic regression model with the health status (sick vs not sick) as a dependent variable was designed after a variable selection (herd level) based on the herd dataset with 618 cows (618 lactations; 115 547 cow days), which included the variables of each behaviour pattern and the stage of lactation nested in the number of lactations as explanatory variables. The explanatory variables were added stepwise to the model, with the final model being selected with respect to the lowest values of Akaike’s and Bayes’ information criteria. Each model was then applied to a dataset with 173 cows (22 891 cow days) at cow level, resulting in individual daily risk probabilities for getting sick. Thus, risk probabilities of each behavioural pattern were estimated and included in the MCUSUM control charts to identify cows at risk of disease. The performance of the MCUSUM control charts was cross-validated to identify the best fitting reference value k and the threshold value h. Alerts given within 5 days prior to diagnosis were counted as detected sicknesses. The performance resulted in a block sensitivity of 70.9–81.4%, specificity of 87.9–94.2% and a false-positive rate of 5.8–12.1%. The performance was confirmed while testing the entire algorithm resulting in a mean area under the receiver operating characteristics curve of 0.89. Calculating precision and the F₁-score were calculated resulted in a precision of 49.0–60.9% (training: 48.8–63.5%) and an F₁-score of 61.1–65.7% in testing (training: 61.0–67.0%). The precision-recall curve (PRC) was derived from precision and recall with an area under the PRC of 0.70 in training and testing. On summarising, the present study was able to develop an algorithm showing good classification potential for the online monitoring of sickness behaviour.
    Keywords algorithms ; data collection ; health status ; lactation ; models ; physical activity ; regression analysis ; risk
    Language English
    Dates of publication 2022-0701
    Publishing place Elsevier B.V.
    Document type Article
    Note Pre-press version
    ZDB-ID 2257920-5
    ISSN 1751-732X ; 1751-7311
    ISSN (online) 1751-732X
    ISSN 1751-7311
    DOI 10.1016/j.animal.2022.100601
    Database NAL-Catalogue (AGRICOLA)

    More links

    Kategorien

  2. Article ; Online: Estimating risk probabilities for sickness from behavioural patterns to identify health challenges in dairy cows with multivariate cumulative sum control charts.

    Dittrich, I / Gertz, M / Maassen-Francke, B / Krudewig, K-H / Junge, W / Krieter, J

    Animal : an international journal of animal bioscience

    2022  Volume 16, Issue 8, Page(s) 100601

    Abstract: Dairy cattle housing is characterised by increasing herd sizes and the need for assisting technical tools to monitor the cows' health. This study investigated the combination of logistic regression models with multivariate cumulative sum (MCUSUM) control ...

    Abstract Dairy cattle housing is characterised by increasing herd sizes and the need for assisting technical tools to monitor the cows' health. This study investigated the combination of logistic regression models with multivariate cumulative sum (MCUSUM) control charts in healthmonitoring of dairy cattle. Sensor information of 618 cows with 791 lactations (138 438 cow days), nine behavioural variables were included as parts of the behavioural patterns: physical activity ("neck activity", "leg activity", "walking duration"), resting ("lying duration", "standing duration", "transitions from lying to standing") and feeding ("feeding duration", "rumination duration", "inactivity duration") behaviour. For each of these behavioural patterns, a logistic regression model with the health status (sick vs not sick) as a dependent variable was designed after a variable selection (herd level) based on the herd dataset with 618 cows (618 lactations; 115 547 cow days), which included the variables of each behaviour pattern and the stage of lactation nested in the number of lactations as explanatory variables. The explanatory variables were added stepwise to the model, with the final model being selected with respect to the lowest values of Akaike's and Bayes' information criteria. Each model was then applied to a dataset with 173 cows (22 891 cow days) at cow level, resulting in individual daily risk probabilities for getting sick. Thus, risk probabilities of each behavioural pattern were estimated and included in the MCUSUM control charts to identify cows at risk of disease. The performance of the MCUSUM control charts was cross-validated to identify the best fitting reference value k and the threshold value h. Alerts given within 5 days prior to diagnosis were counted as detected sicknesses. The performance resulted in a block sensitivity of 70.9-81.4%, specificity of 87.9-94.2% and a false-positive rate of 5.8-12.1%. The performance was confirmed while testing the entire algorithm resulting in a mean area under the receiver operating characteristics curve of 0.89. Calculating precision and the F
    MeSH term(s) Animals ; Bayes Theorem ; Cattle ; Cattle Diseases/diagnosis ; Cattle Diseases/epidemiology ; Dairying/methods ; Female ; Lactation ; Milk
    Language English
    Publishing date 2022-07-28
    Publishing country England
    Document type Journal Article
    ZDB-ID 2257920-5
    ISSN 1751-732X ; 1751-7311
    ISSN (online) 1751-732X
    ISSN 1751-7311
    DOI 10.1016/j.animal.2022.100601
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  3. Book ; Thesis: Somatostatin-Rezeptor-Szintigraphie in der Diagnostik und Verlaufskontrolle des kleinzelligen Bronchialkarzinoms

    Dittrich, Ina

    1996  

    Author's details vorgelegt von Ina Dittrich
    Language German
    Size 82 Bl. : Ill.
    Document type Book ; Thesis
    Thesis / German Habilitation thesis Magdeburg, Univ., Diss., 1997
    HBZ-ID HT008488256
    Database Catalogue ZB MED Medicine, Health

    Kategorien

  4. Article: Alterations in sick dairy cows' daily behavioural patterns.

    Dittrich, I / Gertz, M / Krieter, J

    Heliyon

    2019  Volume 5, Issue 11, Page(s) e02902

    Abstract: The recent development of dairy production is characterised by increasing herd sizes and therefore increasingly complicated visual observation of cow behaviour, which is traditionally the basis for diagnoses of production diseases. The limitation of the ... ...

    Abstract The recent development of dairy production is characterised by increasing herd sizes and therefore increasingly complicated visual observation of cow behaviour, which is traditionally the basis for diagnoses of production diseases. The limitation of the direct visual behavioural observation due to the increasing number of individual cows implies a growing need for an automated detection of changes within behavioural patterns to identify cows that show sickness behaviour. Sensor systems can be used to measure behavioural patterns such as activity, resting, feeding and rumination. Behavioural patterns change with the occurrence of sickness but also interact with external factors. Changes such as prolonged lying duration or shortened feeding duration caused by metabolic disorders or infections, respectively, then serve as a detection tool for sick individuals. The aim of the present review is to outline the impact of production diseases on the daily behavioural patterns of dairy cows by referring to sickness behaviour.
    Language English
    Publishing date 2019-11-22
    Publishing country England
    Document type Journal Article ; Review
    ZDB-ID 2835763-2
    ISSN 2405-8440
    ISSN 2405-8440
    DOI 10.1016/j.heliyon.2019.e02902
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  5. Article: Alterations in sick dairy cows’ daily behavioural patterns

    Dittrich, I / Gertz, M / Krieter, J

    Heliyon. 2019 Nov., v. 5, no. 11

    2019  

    Abstract: The recent development of dairy production is characterised by increasing herd sizes and therefore increasingly complicated visual observation of cow behaviour, which is traditionally the basis for diagnoses of production diseases. The limitation of the ... ...

    Abstract The recent development of dairy production is characterised by increasing herd sizes and therefore increasingly complicated visual observation of cow behaviour, which is traditionally the basis for diagnoses of production diseases. The limitation of the direct visual behavioural observation due to the increasing number of individual cows implies a growing need for an automated detection of changes within behavioural patterns to identify cows that show sickness behaviour. Sensor systems can be used to measure behavioural patterns such as activity, resting, feeding and rumination. Behavioural patterns change with the occurrence of sickness but also interact with external factors. Changes such as prolonged lying duration or shortened feeding duration caused by metabolic disorders or infections, respectively, then serve as a detection tool for sick individuals. The aim of the present review is to outline the impact of production diseases on the daily behavioural patterns of dairy cows by referring to sickness behaviour.
    Keywords automation ; milk production ; rumination
    Language English
    Dates of publication 2019-11
    Publishing place Elsevier Ltd
    Document type Article
    Note NAL-AP-2-clean
    ZDB-ID 2835763-2
    ISSN 2405-8440
    ISSN 2405-8440
    DOI 10.1016/j.heliyon.2019.e02902
    Database NAL-Catalogue (AGRICOLA)

    More links

    Kategorien

  6. Article: Combining multivariate cumulative sum control charts with principal component analysis and partial least squares model to detect sickness behaviour in dairy cattle

    Dittrich, I / Gertz, M / Maassen-Francke, B / Krudewig, K.-H / Junge, W / Krieter, J

    Computers and electronics in agriculture. 2021 July, v. 186

    2021  

    Abstract: The present study investigated the suitability of latent variables, generated by principal component analysis (PCA) and partial least squares regression (PLS), for the early detection of behavioural changes due to developing sickness. Therefore, ... ...

    Abstract The present study investigated the suitability of latent variables, generated by principal component analysis (PCA) and partial least squares regression (PLS), for the early detection of behavioural changes due to developing sickness. Therefore, behavioural information was collected from 480 milking cows between September 2018 and May 2019 on a German dairy farm. All animals were equipped with two sensor systems delivering information about the behavioural patterns resting, activity, feeding and rumination. In addition, performance parameters were provided by the milking parlour. The sensor information was combined in seven different ways to create scenarios (C1-C7) that are potentially available on-farm. Diagnoses, treatments and claw trimmings were provided by the farm’s veterinarian and claw trimmer. 298 cows with 44,865 days of observations were selected from all the milking cows in consideration of different data restrictions such as missing values; hence a data set was created that included 154 healthy and 144 sick cows with 300 sickness events. For the analyses, the data set was subdivided into ten training data sets (90% of the cows) which were used to set the necessary number of principal components (PCs) and PLS-factors, respectively, and ten testing (10% of the cows) data sets. After selecting PCs and PLS-factors from each scenario, the training data sets were used to train the reference value (k) and threshold value (h) of the multivariate cumulative sum control charts (MCUSUM). The best performing combination of k and h was then used for testing accuracy of the approaches. Hence, 2 (C1) to 6 (C7) PCs were chosen that jointly explained ≥ 70% of the data’s variance. Within the PLS approach, 3 (C1) to 10 (C7) PLS-factors were selected that explained the variation of the health status. The PCA-MCUSUMs showed consistent sickness detection as the block sensitivities showed a range from 69.9% to 77.2% (training: 71.0% to 75.8%) and specificities varied from 85.3% to 89.3% (training: 85.2% to 89.4%). The PLS-MCUSUMs showed some irregularities. Here, scenarios C5 and C7 detected > 83% and > 94% sickness events in training and testing, thus causing a decrease of specificities and therefore increased false positive rates of ≥ 20%. In summary, both approaches could be applicable in practice, although the results of the PCA are more consistent and could be more reliable in comparison to the PLS approach.
    Keywords agriculture ; claws ; dairy farming ; data collection ; electronics ; farms ; health status ; models ; principal component analysis ; rumination ; variance ; veterinarians
    Language English
    Dates of publication 2021-07
    Publishing place Elsevier B.V.
    Document type Article
    Note NAL-AP-2-clean
    ZDB-ID 395514-x
    ISSN 0168-1699
    ISSN 0168-1699
    DOI 10.1016/j.compag.2021.106209
    Database NAL-Catalogue (AGRICOLA)

    More links

    Kategorien

  7. Book ; Thesis: Der Kieferchirurg Johann Alexander Vogelsang (1890 - 1963)

    Dittrich, Ines

    ein Beitrag zur Entwicklung der Zahnheilkunde im Rahmen des Johannstädter krankenhauses und der Medizinischen Akademie "Carl Gustav Carus" Dresden

    1994  

    Author's details vorgelegt von Ines Dittrich
    Language German
    Size 196, [32] Bl. : Ill.
    Document type Book ; Thesis
    Thesis / German Habilitation thesis Dresden, Techn. Univ., Diss., 1995
    HBZ-ID HT007097072
    Database Catalogue ZB MED Medicine, Health

    Kategorien

  8. Article ; Online: Variable selection for monitoring sickness behavior in lactating dairy cattle with the application of control charts.

    Dittrich, I / Gertz, M / Maassen-Francke, B / Krudewig, K-H / Junge, W / Krieter, J

    Journal of dairy science

    2021  Volume 104, Issue 7, Page(s) 7956–7970

    Abstract: The present observational study investigated the application of multivariate cumulative sum (MCUSUM) control charts by including variables selected by principal component analysis and partial least squares (PLS) regression to identify sickness behavior ... ...

    Abstract The present observational study investigated the application of multivariate cumulative sum (MCUSUM) control charts by including variables selected by principal component analysis and partial least squares (PLS) regression to identify sickness behavior in dairy cattle. Therefore, sensor information (24 variables) was collected from 480 milking cows on a German dairy farm between September 2018 and December 2019. These variables were gathered in potentially different scenarios on farm. In total, data from 749 animals were available for evaluation. Variables were chosen based on the information of 499 cows (62 healthy; 437 sick) with 93,598 observations. The available diagnoses were collected together to form 1,025 sickness events. Hence, the different numbers of selected variables were included into the MCUSUM control charts. The performance of the MCUSUM control charts was evaluated by a 10-fold cross validation; hence, 90% of the original data set (749 cows) represented the training data, and the remaining 10% was used to test the training results. On average, the 10 training data sets included 124,871 observations with 1,392 sickness events, and the 10 testing data sets included, on average, 13,704 observations with 153 sickness events. The MCUSUM generated from the variables selected by principal component analysis showed comparable results in training and testing in all scenarios; therefore, 70.0 to 97.4% of the sickness events were detected. The false-positive rates ranged from 8.5 to 29.6%, and thus they created at least 2.6 false-positive alerts per day in testing. The variables selected by the PLS regression approach showed comparable sickness detection rates (70.0-99.9%) as well as false-positive rates (8.2-62.8%) in most scenarios. The best performing scenario produced 2.5 false-positive alerts in testing. Summarizing, both approaches showed potential for practical implementation; however, the PLS variable selection approach showed fewer false positives. Therefore, the PLS regression approach could generate a more reliable sickness detection algorithm, if combined with MCUSUM control charts, and considered for practical implementation.
    MeSH term(s) Animals ; Cattle ; Cattle Diseases/epidemiology ; Dairying ; Female ; Illness Behavior ; Lactation ; Least-Squares Analysis ; Milk
    Language English
    Publishing date 2021-04-02
    Publishing country United States
    Document type Journal Article ; Observational Study, Veterinary
    ZDB-ID 242499-x
    ISSN 1525-3198 ; 0022-0302
    ISSN (online) 1525-3198
    ISSN 0022-0302
    DOI 10.3168/jds.2020-19680
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  9. Book ; Thesis: Kinder in den ersten drei Lebensjahren

    Dittrich, Irene

    eine empirische Analyse der Umweltbedingungen, ihrer Identität und Bildungsergebnisse auf der Grundlage des Sozio-oekonomischen Panels

    2012  

    Title variant Umweltbedingungen, Identität und Bildungsergebnisse im frühen Kindesalter - eine empirische Analyse auf der Grundlage des Sozio-oekonomischen Panels
    Author's details Irene Dittrich
    Keywords Children ; Early childhood education ; Toddlers ; Handlungskompetenz ; Identitätsentwicklung ; Sozialisation ; Kind ; Bildung ; Alltag
    Language German
    Size 297 S., Ill., graph. Darst., 230 mm x 150 mm
    Publisher Beltz Juventa
    Publishing place Weinheim u.a.
    Document type Book ; Thesis
    Thesis / German Habilitation thesis Univ., Fak. für Geistes-, Sozial- und Erziehungswiss., Diss. u.d.T.: Dittrich, Irene--Magdeburg, 2011, Umweltbedingungen, Identität und Bildungsergebnisse im frühen Kindesalter - eine empirische Analyse auf der Grundlage des Sozio-oekonomischen Panels
    Note Literaturverz. S. 290 - 297
    ISBN 9783779924340 ; 377992434X
    Database Former special subject collection: coastal and deep sea fishing

    More links

    Kategorien

  10. Book ; Thesis: Kinder in den ersten drei Lebensjahren

    Dittrich, Irene

    eine empirische Analyse der Umweltbedingungen, ihrer Identität und Bildungsergebnisse auf der Grundlage des Sozio-oekonomischen Panels

    2012  

    Title variant Umweltbedingungen, Identität und Bildungsergebnisse im frühen Kindesalter - eine empirische Analyse auf der Grundlage des Sozio-oekonomischen Panels
    Author's details Irene Dittrich
    Keywords Children ; Early childhood education ; Toddlers ; Handlungskompetenz ; Identitätsentwicklung ; Sozialisation ; Kind ; Bildung ; Alltag
    Language German
    Size 297 S., Ill., graph. Darst., 230 mm x 150 mm
    Publisher Beltz Juventa
    Publishing place Weinheim u.a.
    Document type Book ; Thesis
    Thesis / German Habilitation thesis Univ., Fak. für Geistes-, Sozial- und Erziehungswiss., Diss. u.d.T.: Dittrich, Irene--Magdeburg, 2011, Umweltbedingungen, Identität und Bildungsergebnisse im frühen Kindesalter - eine empirische Analyse auf der Grundlage des Sozio-oekonomischen Panels
    Note Literaturverz. S. 290 - 297
    ISBN 9783779924340 ; 377992434X
    Database Library catalogue of the German National Library of Science and Technology (TIB), Hannover

    More links

    Kategorien

To top